Lecture Notes in Mathematics Edited by A. Dold and B. Eckmann
Jean Moulin Ollagnier
anvd Statistical h/lechanics
Spri...
40 downloads
1778 Views
5MB Size
Report
This content was uploaded by our users and we assume good faith they have the permission to share this book. If you own the copyright to this book and it is wrongfully on our website, we offer a simple DMCA procedure to remove your content from our site. Start by pressing the button below!
Report copyright / DMCA form
Lecture Notes in Mathematics Edited by A. Dold and B. Eckmann
Jean Moulin Ollagnier
anvd Statistical h/lechanics
Spri nger-Verlag Berlin Heidelberg New York Tokyo
Author Jean Moulin Ollagnier Departement de Mathematiques, Universite Paris Nord Avenue J. B, Clement, 93430 Villetaneuse, France
AMS Subject Classification (1980): 20F, 28D, 54H20, 82A05, 82A25 ISBN 3-540-15192-3 Springer-Verlag Berlin Heidelberg New York Tokyo ISBN 0-387-15192-3 Springer-Verlag New York Heidelberg Berlin Tokyo Th~s work is subject to copyright. All rights are reserved, whether the whole or part of the material is concerned, specifically those of translation, reprinting, re-use of illustrations, broadcasting, reproduction by photocopying machine or similar means, and storage in data banks. Under § 54 of the German Copyright Law where copies are made for other than private use, a fee is payable to "Verwertungsgesellschaft WOW', Munich. © by Springer-Verlag Berlin Heidelberg 1985 Printed in Germany Printing and binding: Beltz Offsetdruck, Hemsbach/Bergstr. 2146/3140-543210
CONTENTS
INTRODUCTION
....................................................
I. P R E L I M I N A R Y
ANALYSIS
I.I.
Sublinear
1.2.
Compact
1.3.
Radon measures
1.4.
Extremal
1.5.
References
2. D Y N A M I C A L
........................................
functions
convex
and
sets
the H a h n - B a n a c h
theorem
.......
...................................
........................................
points
in c o m p a c t
convex
sets
................
............................................
SYSTEMS
AND AMENABLE
GROUPS
.......................
I I 4 6 10 14
15
2.1.
Dynamical
systems
2.2.
The
point
2.3.
Amenability
2.4.
References
............................................
33
3. E R G O D I C T H E O R E M S
............................................
35
4.
fixed
.....................................
V
property
and the a m e a n i n g
and a l g e b r a i c
constructions
3.1.
Invariant
linear
functionals
3.2.
Invariant
vectors
and mean
3.3.
Individual
ergodic
theorems
3.4.
The
ergodic
theorem
3.5.
References
ENTROPY
saddle
Equivalence
DYNAMICAL
4.2.
Entropy
of p a r t i t i o n s
Entropy
of d y n a m i c a l
4.4.
The
a n d the 4.5.
theorems
...........
41 47
............................
50
ergodic
52
.......................
53
systems ..............
53
................................. systems
subadditive
35
...........................
dynamical
Shannon-McMillan
References
19 30
..........................
ergodic
SYSTEMS
of a b s t r a c t
4.3.
almost
......
...............
............................................
OF ABSTRACT
4.1.
filter
15
..........................
54 59
theorem
theorem
......................
............................................
64 70
IV
5. E N T R O P Y
6.
7.
A
FUNCTION
AND
THE
5.1.
Topological
entropy
5.2.
Pressure
a continuous
5.3.
Entropy
5.4.
References
STATISTICAL
of as
MECHANICS
6.2.
Cocycles
6.3.
Phase
6.4.
Supermodular
6.5.
References
ON
of
and
and
72
.................
82
measure
measures
measures
86
................
91 96
............................
...........................................
SYSTEMS
IN
STATISTICAL
MECHANICS
7.2.
Invariant
Gibbs
measures
7.3.
Mixing
7.4.
Example:
7.5.
References
properties
and
.................
....................... equilibrium
measures
of
Ruelle's
....
.......................
...........................................
COUNTABLE
8.1.
Tiling
amenable
8.2.
Equivalence
8.3.
Rokhlin's
8.4.
References
of
AMENABLE
groups countable
lemmaand
GROUPS
...................
............................... groups
......................
hyperfiniteness of countable amenable groups
...........................................
..................................................
.........................................................
98 104
....................................
a theorem
86
..............
....................................
interactions
specifications
INDEX
85
.........................
Gibbs
local
BIBLIOGRAPHY
71
the
quasi-invariant
transitions
71
the variational principle
A LATTICE
specifications
OF
........
function,and
Invariant
EQUIVALENCE
PRINCIPLE
...........................................
Local
DYNAMICAL
VARIATIONAL
..................................
a function
6.1.
7.1.
8.
AS
105 105 106 108 112 115
117 117 124 130 138
139
145
INTRODUCTION
It can be said that for the study of dynamical the crucial property of the acting group. classical
point of view is not only natural,
applications isometries
in statistical
systems amenability
This generalization
is
of the
but is also related
to the
mechanics where the acting group consists of
of the lattice.
This text, which grew out of a "third cycle" course in Ergodic Theory and Statistical the University
Mechanics
of Paris VI in 1980, deals with both topological
measure-theoretic dynamical
which I gave together with Didier Pinchon at
dynamical
systems,
systems of statistical
The existence of the ameaning
and
the symbolic
mechanics.
filter for an amenable group shall be
proved with the use of strongly dynamical
and in particular
subadditive
system of total orders.
Several
set functions
and the special
ergodic theorems
shall be
given. The entropy theory of measure-theoretic completely
described;
dynamical
and the Shannon-McMillan
corollary of a new ergodic
theorem,
systems shall be
theorem is given as a
the "almost subadditive
ergodic
theorem." A link between topological
and measure-theoretic
be made by way of the variational continuous
principle
function on a compact Hausdorff
dynamical
systems
shall
for the pressure of a space under the action of an
amenable group. A careful
study of subadditivity
use of tiling methods
in proving
of set functions several
allows us to avoid the
important
tiling is essential when proving the equivalence
theorems.
However,
of a countable
amenable
group with Z. This proof is given in the last chapter along with Rokhlin's lemma and the proof of the hyperfiniteness
of countable
(using the tower extension argument of Connes,
amenable groups
Feldman and Weiss).
Vl I would like to express my indebtedness significant portion of the material
to Didier Pinchon,
to whom a
contained in this text is due.
I also would like to thank Jean-Paul Thouvenot for many helpful discussions which stimulated the work on this text, and Tony Frank Paschall for his assistance with the English manuscript.
Jean Moulin Ollagnier Villetaneuse,
September 1984
i. P R E L I M I N A R Y ANALYSIS
I.I. S U B L I N E A R FUNCTIONS AND THE H A H N - B A N A C H THEOREM
I.I.I.
Definition.
Let E be a real vector
space. A real function p on E
is said to be sublinear if it is both subadditive and p o s i t i v e l y homogeneous,
i.e. if the two following conditions hold:
i)
for every pair
p(x+y)
(x,y) of vectors in E
ii) for every x and every positive number
1.1.2.
Remark.
~ p(x)
+ p(y)
p(Ix) = I p(x)
It is quite clear that a linear functional
is a sublinear
function and that the least upper bound of a set of sublinear functions, if one exists,
is still sublinear.
linear functionals
Therefore,
a least upper bound of
is a sublinear function. We shall state that this
p r o p e r t y is characteristic.
1.1.3. Example.
Consider the vector space C(X) of all real continuous
functions on the compact set X. Function s, defined on this space by the formula
s(f)
=
sup f(x) xeX
is sublinear.
1.1.4.
Extension theorem
(Hahn-Banach).
Let E be a real vector
space and
p be a sublinear function on E. Let F be a subspace of E and m be a linear functional b o u n d e d above by p on F, i.e. for every x in F, m(x) Then,
~ p(x).
there exists a linear functional n on the whole space E, still
b o u n d e d above by p, w h i c h is an extension of m. The proof of the theorem e s s e n t i a l l y depends on an extension lemma, and, w h e n the dimension is infinite,
on Zorn's lemma as well.
1.1.5.
Extension
lemma.
Let E be a real vector
function on E, G a vector functional
subspace of E non-equal
p a sublinear
to E, and f a linear
on G bounded by p.
Let a be an element of E\G so that the vector greater
space,
than G. It is then possible
a linear functional
space G 8 Ra is strictly
to find an extension of f which is
on G 8 Ra and is still bounded by p.
Proof of the lemma. We look for a real number ~ such that, in G and every real number ~, the following f(x) + ~ Using homogeneity,
< p(x+~a)
we have only to verify
f(x) + a
~
p(x+a)
and
that, f(x)
The real number ~ must then be chosen greater Sup yeG
for every x
inequality holds:
for every x in G,
- ~
~
p(x-a)
than or equal to
(f(y)-p(y-a))
and less than or equal
to
Inf (p(x+a)-f(x)) xeG Such a choice is possible f(y) - p(y-a) which is equivalent Because
to
if, for every pair
on F and the dual Eucli-
on F'
Call f' the orthogonal
projection
of f on K, i.e.
the unique element
of
K such that Inf geK
Let x be the vector
=
such that
f - f' = <x,.>.
For every g in K and every real number e between 0 and I, belongs
(f'+e.(g-f'))
to K and (f-f')(x)
=< IIf-f'-e.(g-f')II 2
=
(f-f') (x) +
For every strictly positive 0
< 2(f'-g) (x) + EIIf'-gll2
2e. (f'-g) (x)
+
E2 llf'-gll2
When ~ tends to 0, this formula reduces to
(g-f')(x) ~ 0 , from which
we derive f'(x) = Sup g(x) geK Therefore f(x)
is less than or equal to f'(x), and the scalar square of
f-f' is non-positive, which means
1.2.5. Proposition.
that f belongs to K.
Let K be a convex part of the dual space E* of a
real vector space E, and let it be compact in the weak* topology. Let x be a vector in E, and consider the least upper bound p(x) of all numbers
f(x), where f belongs to K. For every x in E, p(x)
So defined, and K(E,p) Proof.
function p is sublinear,
is finite.
and the two compact convex sets K
are equal.
For every x, the function
therefore bounded.
f --> f(x)
is continuous on K and
Function p is then defined on the whole space E and
it is a supremum of linear functionals.
According to remark 1.1.2, p is
sublinear. By definition, K is contained in K(E,p). To prove the converse inclusion,
consider an element f of K(E,p).
For every finite dimensional vector subspace of E, there exists according to lemma 1.2.4 a convex compact n o n - e m p t y subset K F of K whose elements give the same value as f to all elements of F. The family of all compact sets K F has the non-empty finite intersection property.
Therefore,
there exists a convex compact subset K E of K, whose
elements give the same value as f to all elements of E. There is only one element in K, which is indeed f, and the converse inclusion is proven.
1.2.6. Remark.
It is possible to deduce the result of p r o p o s i t i o n 1.2.5
from a geometrical
form of the H a h n - B a n a c h theorem.
1.3. RADON MEASURES
1.3.1.
Definition.
Consider the vector space C(X) of all real continuous
functions on a given compact Hausdorff space X. A Radon measure on X is a linear functional on C(X),
continuous for the s u p r e m u m norm given by
the formula
1.3.2. gical
IIfll = Sup xeX
Definition.
If(x) l.
Let
space and ~ a
(X,~) be a measurable
o-algebra
A positive real measure measure
of all its compact
is said to be outer regular the greatest 1.3.3.
subsets.
space,
theorem.
and let A be a positive
Then there exists
a o-algebra ~ i n
~ represents
real measure on this space
of every measurable
set is
of all open sets containing
linear functional
on Cc(X),
on X with a compact
X which contains
all Borel
support. sets, and
the following properties:
A
feCc(X)
---> ~(f)
=
f f d~ X
second,
~ is inner and outer regular and gives a finite measure
compact
sets; and,
third,
the o-algebra ~ is complete
One proof of this can be found in Rudin 1.3.4.
Remark.
theorem,
the Borel o-algebra 1.3.5.
Corollary.
correspondence,
and also, when necessary,
the restriction
Let ~ be a Radon measure on a compact Hausdorff semi-continuous
Proof.
to
space
function on X. Then the integral
is the supremum of all ~(~), where ~ is a continuous
greater
we shall
derived from a linear functional
of this measure.
X, and f be an upper ~(f)
to
for ~.
(i).
Because of the above one-to-one
call a Radon measure both the measure on C(X) by Riesz's
it.
Let X be a locally compact
real functions
a unique positive measure ~ on ~ w i t h first,
A positive
if the measure
lower bound of the measures
the space of all continuous
if the
subset of X is the least upper bound of the
The Riesz representation
Hausdorff
the Borel o-algebra.
on this space is said to be inner regular
of every measurable
measures
containing
space, where X is a topolo-
function on X
than or equal to f. For every continuous
results
from the positivity
function ~, the inequality
~(f)
~
~(~)
of ~.
Consider now,
for every natural number n, the function fn which is equal
to Sup(f,-n),
and is so upper
Sequence
(fn) then decreases
theorem,
the integral
semi-continuous to f. According
and bounded. to the monotone
of f is the limit of the integral
convergence
of fn when n
tends to infinity. We have only then to prove the results for bounded upper semi-continuous functions.
By adding a constant we can even restrict the proof to the
case of non-negative functions. To achieve such a proof,
let g be a n o n - n e g a t i v e upper semi-continuous
function on X. For every positive real number 8, g~ is the function given by
= g~ In fact,
~
l{g~n6}
6"n= 0
there is a finite number of terms in the sum that are different
from 0 since g is bounded.
The last subscript is
n O = E(Sup(g)/6).
This function is greater than or equal to g, and this inequality holds:
~(g~ - g)
0.
Denote by C + the subspace of C consisting of all points reaches
linear
z at which f
its m a x i m u m value on C.
Because C is compact,
C + is not empty.
It it clearly a convex and closed
subset of C. The open-segment p r o p e r t y still holds for C +. Indeed,
consider a convex combination
M = ~A + BB, where ~ and B are
n o n - n e g a t i v e and whose sum is equal to i; and, if M belongs to C +, A and B also belong to C because the open-segment property holds for C.
11
Moreover,
the inequalities f(A) ~ of(A) + ~f(B)
imply
f(A) = f(B) = f(M)
Therefore
1.4.3.
Example.
extremal
f(B) ~ of(A) + ~f(B)
, and the points
C + is an element
and this concludes
and
A and B then belong to C +.
of I, strictly greater
than C for the order;
the proof.
The following
situation will enable us to characterize
points.
X is a compact Hausdorff (defined in 1.1.3)
space and s is the sublinear
so that K(C(X),s)
all Radon probability measures N is a vector
function on C(X)
is the convex and compact
set of
on X (1.1.8).
subspace of C(X) such that,
for every f in N, s(f)
is non-
negative. The null functional
is then bounded by s on N and it is possible,
ing to theorem 1.1.4,
to find a functional
space E whose restriction The non-empty
to N is 0.
set K(C(X),s,N)
give an integral
equal
the extension p(f)
The following
=
on X that
of N is then a convex and
this compact and convex set is characterized
by its upper bound p according Applying
of all Radon probability measures
to 0 to all elements
compact part of K(C(X),s);
accord-
bounded by s on the whole
to 1.2.5.
lemma 1.1.5 to the space N • Rf, p may be written
Sup meK(C(X),s,N)
m(f)
=
Inf s(f+g) geN
theorem gives a characterization
of the extremal
points
in
K(C(X),p). 1.4.4.
Theorem.
In 1.4.3,
the extremal
the measures m for which the subspace
points N @ R.I
in K(C(X),p)
are precisely
is dense in C(X)
for the
p s e u d o - n o r m m(l.l). Proof. i) Let us first show that a measure with the above property Consider
a strict convex combination
property holds
for m:
(=i.o2 > 0) where
is extremal.
the density
12
m = ~iml + ~2m2 The two linear functionals m I and m 2 are continuous m(I.l)
for the p s e u d o - n o r m
since
Iml(f) l
~
(1/~ 1) m(Ifl)
Im2(f) l ~ (1/~ 2) m(Ifl)
and
They are equal to m on the dense subspace N @ R.I, and therefore are equal on the whole space. Functional m is then an extremal point of K(C(X),p). 2) The converse can be proven by contraposition. If
N ~ R.I
is not a dense subspace of C(X) for the p s e u d o - n o r m m(l.l),
there exist a real continuous
function f and a strictly positive real
number ~ such that, for every g in N and every real number a,
m(l f-g-al )
>
~
>
0
Consider the linear functional 8 on
0(g + a + ~f) =
N • R.I @ R.f
given by
~=
The functional verifies on this subspace the inequality
e ~ m(I.I).
It is then possible to find on the whole space C(X) a linear functional b o u n d e d above by m(I.I) , whose restriction is 0. Denote it by ~. The d e c o m p o s i t i o n
m
=
(1/2)
((m+~) + (m-~))
is non-trivial because #(f) It remains to be shown that
is not 0. m+~
and
m-~
are elements of K(C(X),p);
but the only thing to be proven is that they are positive measures. If h is a continuous non-negative
(m + ~¢)(h)
1o4.5. Remark.
=
m(h)
The dense subspace
function on X, we get (s = jl)
+ E¢(h)
N @ R.I
>
m(lh[)
- [#(h)[
>
0
is then dense in LI(X,Q,m)
the L l - n o r m , where m is the regular measure built from the functional m by theorem 1.3.4. 1.4.6. Remark.
Compact convex sets described in 1.4.3 are simplexes and
for
13
all compact 1.4.7.
simplexes
Example.
of probability measures have such forms.
Let f be a continuous
mapping
from a compact
space Y
onto a compact set X, and let m be a Radon probability measure The set of all probability measures type described Extremal morphism
in this convex set are exactly those for which f is a
of the two measure of the quotient
the o-ideals 1.4.8.
in 1.4.3.
points
conjugacy
spaces
(Y,~,n)
Boole algebras
and
(X,~,m),
i.e. an iso-
of the o-algebras
of events by
of null sets.
Example.
Let X be a compact
A Radon probability measure
set and T a h o m e o m o r p h i s m
of X.
~ on X is said to be invariant under the
action of T if the equality function
on X.
on Y whose image by f is m is of the
~(f)
= ~(foT)
holds
for every continuous
f on X.
The set M(X,T)
of all Radon probability measures
on X, which are invar-
iant under T, is not empty and is also a convex and compact set of the type described Extremal invariant
elements
Let us prove Here,
in 1.4.3.
invariant probabilities of LI(X,~,~)
are ergodic, are constant
which is to say the only functions.
these results.
the space N is generated by the increments
belongs
to C(X).
increment It shall
Every linear
f - foT
combination ~ ~i(fi-fioT)
where
f
is still an
f - foT. suffice to verify
s(f-foT)
~ 0
Let x be a point in X at which f reaches a point the difference therefore,
(f-foT)(x)
s is non-negative
The extremal
points
in M(X,T)
its least upper bound.
is greater
At such
than or equal to 0, and,
on N. are those for which the subspace N @ R.I
is dense in LI(X,~,~ ). Consider
now the sequence of contraction
operators
A n of LI(X,~,~)
where
A n is given by the expression An(f) The sequence
=
(An(f))
n-I (I/n). ~ loT i of averages
converges
to the expectation
~(f)
for
every element of N • R.I; and, by virtue of the density of this subspace, the convergence
result also holds
for every element of LI(X,~,~).
14
If f is an invariant to u(f).
An invariant
if u is extremal 1.4.9.
element,
Remark.
An(f)
is a constant
element of LI(X,Q,u)
In the previous
space.
In Chapter
that converges
is then a constant
function
in M(X,T). example we proved that there always
at least one invariant probability under Hausdorff
sequence
This was demonstrated
2, we shall examine
a homeomorphism
by Bogoliubov
the transformation
are invariant probability measures whenever
and Krylov
groups
exists
of a compact (1).
for which there
they act on a compact
space
by homeomorphisms. To prove the existence we used a convergence ergodic
theorem.
of invariant probabilities theorem of means,
in the present
which is a special
chapter,
case of a mean
Chapt,er 3 deals further with this topic.
1.5 REFERENCES
For further Bourbaki's
study of Hahn-Banach text devoted
Riesz representation Choquet
theorem,
to topological
refer to Meyer
vector
spaces
theorem is proved by Rudin
(i) is recommended
for general
and more in-depth study of simplexes.
(i) or to
(3).
(i, chapter
information
2).
on functional
analysis
2. DYNAMICAL
2.1. DYNAMICAL
2.1.1.
SYSTEMS AND AMENABLE GROUPS
SYSTEMS
Definition.
We call a pair
when X is a compact Hausdorff
(X,G)
a topological
dynamical
system
space and G a group of homeomorphisms
of
this space. When discussing
the action of an abstract group G, we shall denote by T g
the homeomorphism (X,T)
of X associated with the element g of G and denote by
the corresponding
dynamical
system.
When G is the group Z of all relative the generator
integers,
T is simply the image of
i.
2.1.2. Example.
The first example
set, and X the product
is given by shifts.
space I G of all mappings
Endowed with the product topology of the discrete a compact Hausdorff
space which is metrizable
Given an element g of G, consider Tg(~)(a) The mappings
topologies,
X becomes
when G is countable.
the mapping T g from X to X:
= ~ (ag)
T g are homeomorphisms
group of all homeomorphisms corresponding
Let I be a finite
from G to I.
of X; and the mapping from G to the
of K, obtained by :sending every g to the
T g, is a group homomorphism.
Such a group homomorphism We shall sometimes
is called an action of G on X by homeomorphisms.
refer to T g as a translation.
Indeed,
T g is the right
translation by g-I of the graphs r($): (a.g-l,i) The set I is sometimes we have constructed 2.1.3.
Example.
e
r(Tg(¢))
(a,i)
called an alphabet,
is called a symbolic
Here is another example,
e
r(~)
and the dynamical
dynamical
system that
system.
which is as symbolic as the
16
preceding.
Given a group G, consider
the set T(G) of all total orders
on G. If t is a total order on a finite part F of G, O(F,t) the set of all total orders on G whose restriction The set of all O(F,t)
is one of the bases of a topology on T(G).
Endowed with this topology, metrizable to T(G)
T(G)
when G is countable;
of the product
Of course,
topology
is a compact Hausdorff on
x < y
For every element g in G, consider Tg(r)
(a,b)
=
The T g are homeomorphisms
2.1.4.
As in example
Definition.
of T(G)
the mapping
and mapping
is a one-to-one
An automorphism
bimeasurable mapping
Definition.
to T(G):
are called translations.
if T and its inverse
of a probability
space
from X to X that preserves
i.e. for every A in the u-algebra (T -I(A))
from T(G)
g to T g gives an action of G
A mapping T is bimeasurable
are both measurable.
the measure,
for
2.1.2 these homeomorphisms
(X,~,~)
4, the following holds:
= ~(A)
Given a probability
action of G on (X,~,~) system.
{0,I} GxG.
~(ag,bg)
mapping
2.1.5.
space, which is
this topology is simply the restriction
we identify an order T with its graph: T (x,y)=l
on T(G).
stands for
to F is t.
space
by automorphisms
(X,~,~)
and a group G, an
is called an abstract
Such an action is then a family of automorphisms
lity space, which is indexed by the elements
dynamical
of the probabi-
of G, and for which the
equality T gh
holds 2.1.6.
=
for every pair Remark.
TgoT h
(g,h) of elements
The question of modulo
spaces will be investigated In these first chapters, pological
of G. 0 automorphisms
and Lebesgue
later.
abstract
dynamical
ones and the automorphisms
systems are derived from to-
are therefore well-defined
mappings.
17
2.1.7.
Proposition.
Let
(X,G) be a topological
be a Radon probability measure of G. This means
every element g of G, the following
Then,
=
function f on X, and for
equality holds:
of the probability
space
is the o - a l g e b r a built by the Riesz representation
lar,
Indeed,
and
~ (f)
the T g are automorphisms
Proof.
system,
on X, which is invariant under the action
that for every continuous
u (foT g)
dynamical
the T g are measurable
for ~; and,
(X,~,~) where
theorem
(1.3.3).
since ~ is inner regu-
for every A in Q, (A)
Of course, compact
=
Sup KcA
~ (K)
here we take the least upper bound of the measures
of all
subsets of A.
A similar result holds for (Tg)-I(A). On the other hand,
according
to corollary
the compact set K, is the greatest continuous Then,
functions
1.3.5, ~(K),
the measure
lower bound of the measures
above the indicator
of
of all
of K.
for every element A in the o-algebra
~, the following
equality
holds: ~(A)
2.1.8.
Example.
=
~((Tg)-I(A))
Taking the topological
dynamical
duced in 2.1.2 we can define a probability Let
system that we intro-
on it in the following way.
(Pl .... ,pn ) be a n-uple of strictly positive
is I, where n is the number of elements If f is a function only depending example
the coordinates
(f) If we take another
=
real numbers whose
sum
in I.
on a finite number of coordinates
in the finite part F), ~(f)
(for
is defined by
i=n ~ F f(a).( ~ Pa. ) aeI i=l l finite part F' that contains
F, the value of u(f)
is
the same. Then the above formula defines value
1 to the constant
a positive
function
linear functional,
I, on the vector
giving the
space of all functions
that only depend on a finite number of coordinates.
18
According
to the Stone-Weierstrass
the uniform norm on C(X), can be extended
theorem,
this subspace
and the uniformly continuous
to the whole
space C(X).
is dense for
linear functional
Here we get a Radon probability
measure ~ on X. It is easy to see that ~ is invariant under tions.
Such an abstract
2.1.9.
Example.
dynamical
Consider
the action of G by transla-
system is called a Bernoulli
the dynamical
system T(G)
introduced
scheme. in 2.1.3
of all total orders on G. All O(F,t)
are open and closed
Let us define a positive which
consists
subsets
of T(G).
linear functional ~ on the subspace of C(T(G)),
of all functions
depending
solely on the restriction
of
the order to a finite part of G, by giving in a coherent way the mass of all O(F,t). It is possible
to do this by setting
The above subspace
~(O(F,t))
is dense in C(T(G))
the Stone-Weierstrass
theorem;
for the uniform norm according
and the functional
of a unique Radon probability measure still
= I/IFI! to
~ is the restriction
on T(G) which we shall nonetheless
call simply ~.
One can easily ensure that ~ is invariant under the action of G on T(G) by translations;
in fact, ~ is invariant under the action of the wider
group of all homeomorphisms According
of T(G)
2.1.10.
Remark.
variant
Radon probability measures
systems.
In the two previous
However,
probability
topological
to find invariant
topological
dynamical
2.1.12.
Radon
system.
for every action on a compact Haus-
there is at least one invariant
A group G is said to have the fixed-point
acting by affine continuous
one-to-one mappings
pact and convex subset of a locally convex Hausdorff space,
dynamical
Radon
As we saw in 1.4.9 the group Z has this property.
Definition.
if, whenever
of G.
system.
examples we were able to build in-
in an arbitrary
dorff space by homeomorphisms, probability.
dynamical
in particular
it is not always possible
measures
But there exist groups such that,
2.1.11.
induced by the permutations
to 2.1.7, we then get an abstract
this compact convex space contains The Markov-Kakutani
theorem.
property on a com-
topological
vector
at least one invariant point.
An Abelian group has the fixed-
point property. The study done in 2.3 leads to one proof of this result,
cf. 2.3.6.
19
2.1.13.
Remark.
Concerning vocabulary:
the study of dynamical
systems
b e g a n with some actions of R and Z, which represented r e s p e c t i v e l y the e v o l u t i o n of a mechanical
system through time, and the d i s c r e t i z a t i o n
b e t w e e n regular time intervals of this evolution; hence the adjective "dynamical". In this text the most significant examples of dynamical be found in statistical mechanics.
systems shall
In these examples the group G does
not connote evolution but consists of isometries.
However,
not prevent us from calling such an action a dynamical
that will
system.
2.2. THE FIXED POINT PROPERTY AND THE AMEANING FILTER
2.2.1 Definition. We call a group G amenable if it has the fixed-point p r o p e r t y described in 2.1.11, however used, 2.2.2.
cf. Greenleaf Definition.
several other definitions
can be
(i). A group is said to give an invariant version of the
H a h n - B a n a c h theorem if the following extension result holds: Let E be a real vector space,
s a sublinear function on E, and T a
right action of a group G on E by linear one-to-one mappings preserving s, i.e. for every f in E and every g in G,
s(f) = s(f.Tg).
Let
F be a subspace of E invariant under the action of G, and m a linear functional on F bounded by s and invariant under the action of G. There exists a linear functional on E bounded by s and invariant under the action of G whose r e s t r i c t i o n to F is m.
2.2.3.
Proposition.
A group G gives an invariant version of the Hahn-
Banach theorem if and only if it has the fixed-point property.
Proof. Let us first show that the fixed-point p r o p e r t y leads to an invariant version of the H a h n - B a n a c h theorem. A c c o r d i n g to the H a h n - B a n a c h theorem, cribed in 2.2.2,
there exist,
in the s i t u a t i o n des-
linear functionals on E bounded by s, whose r e s t r i c t i o n
to F is m. The set of all these linear functionals of E* for the weak* topology.
is a convex and compact subset
20
The group G acts on this set by the affine one-to-one mappings
Tg(n)(f)
=
given by
n(f.T g)
There is an invariant point in this compact and convex set, i.e. a linear functional bounded by s and invariant under the action of G on E whose r e s t r i c t i o n to F is m.
In order to demonstrate the converse,
let K be a convex and compact
subspace of a locally convex Hausdorff topological vector space E, and let T be an action of a group G on K by affine continuous one-to-one mappings. Let E be the real vector space of all continuous real functions on K, and s the usual
sublinear function on E (defined in 1.1.3).
From the left action of G on K we can deduce a right action of G on E and still denote it by T
(f.Tg)(x)
=
f(Tg(x))
Next we take the subspace reduced to the function 0 as the subspace F. Thanks
to the fixed point property,
there exists a Radon p r o b a b i l i t y
m e a s u r e on K invariant under the given action of G. Because K is a compact and convex part of E*, the center of gravity of this p r o b a b i l i t y is an invariant point of K.
2.2.4.
Example.
We can prove that finite groups are amenable.
Indeed,
if
the finite group F acts on the compact and convex set K, the m e a n value
(IlIFI). [ Tg(x) geF is a fixed point of this action for every x in K.
2.2.5.
Example.
To prove that Z is amenable,
let K be a compact convex
set and T be an affine continuous one-to-one mapping of K. Consider a point x in K and the sequence
(Mn) of affine continuous oper-
ators on K given by
Mn
=
n-i (l/n). ~ Ti
Let x' be a limit point of the sequence
x n = Mn(X).
And let p be any of the continuous pseudo-norms
that define the topology
21 of the locally convex topological
vector
space in which K lies.
Because p is continuous
p(x'-T(x'))
~
Inf Sup P(Mn(X)-T.Mn(X))
N And because
Mn(X)
- T.Mn(X)
p(x'-T(x'))
= (i/n).(x - Tn(x))
~ Inf Sup (2/n).p(x)
N The value p(x'-T(x'))
n~N
n~N
is then equal to 0 for every continuous
n o r m on E; and because E is a Hausdorff
space this means
pseudo-
that x' is an
invariant point. 2.2.6.
Remark.
property
In the above example,
we demonstrated
the fixed-point
for Z by finding a sequence of finite parts of Z, the segments
A n = {0 ..... n-l},
such that the ratio
(I/IAnl).IAnAAn T I tends to 0
when n tends to infinity. All of which 2.2.7. F(G),
leads us to the following
Definition.
definition.
Given a finite part D of G, m D is the function on
the set of all finite parts of G, defined by mD(A )
=
l{xeA,~deD,dx~A}l
Intuitively we can see that A is as invariant under the right translations by the elements 2.2.8.
Definitions.
of D as the ratio
mD(A)/IA I
is small.
A group G is said to have an ameaning
filter
if, for
every finite part D of G and every positive real number 6, there exist finite non-empty parts of G such that the ratio
mD(A)/IA 1
is less
than o. The non-empty
set of all these finite parts of G is then denoted by
M(D,6 ). It is clear that if D' contains contained
The parts M(D,~) positive
of F(G)\{~}
real number)
we call the ameaning 2.2.9.
Proposition.
amenable.
D, and if 6' is less than 6, M(D',6')
is
in M(D,~). (where D is a finite part of G, and 6 is a
are then a basis of a filter M on F(G)\{~},
which
filter of G. If the group G has an ameaning filter,
it is then
22 This proof shall be similar
to the one in example
2.2.5.
Let K be a compact and convex subset of a locally convex Hausdorff
topolo-
gical vector space, and T an action of the group G on K by affine continuous one-to-one mappings. For every finite and non-empty part of G, consider
the average operator
M A given by MA
=
For every pair
(I/IAI).
(D,~),
~ Tg geA
F(D,~)
stands for the closed subset of K, which is
the closure of the union of all images of K by the operators
M A where A
is an element of M(D,~). Because
the set of all M(D,~)
has the non-empty
is a filter basis,
finite intersection
Next let F be the common intersection
the family of the F(D,~)
property. of all F(D,~),
and let y be a point
in F. For every h in G and every continuous
pseudo-norm
p on E, the following
inequality holds: p(y - Th(y))
Then,
Inf (D,~)
Sup AeM(D,~)
Inf (D,d)
Sup AeM(D,~)
P(MA(X)
Th.MA(X))
(2/IAl).m{h}(A).p(x)
for every h in G and every p,
p(y - Th(Y))
= 0
And y is invariant under the action of G. The rest of part 2.2 is devoted to the proof of the converse of the previous result:
every amenable group has an ameaning
This theorem was first proved by E. F~Iner tained in our work 2.2.10.
filter.
(I). We give here the proof ob-
(2) which comes from the study of invariant
Definition.
An invariant
capacity
capacities.
is a real function on F(G) with
the four following properties: i)
m(~)
=
0
ii)
for every pair
(A,B),
(strong subadditivity)
m(AUB)
+ m(A~B)
~ m(A) + m(B)
23 iii)
for every finite part A and every g in G,
iv)
there exists
m(A)
= m(Ag)
(right invariance) a positive
and a, the increment
2.2.11.
Example.
the cardinal
A -->
functions m D for instance, 2.2.12.
m(A~{a})
The first example
function
Proposition.
constant K such that,
of an invariant
Properties
used to verify
than -K.
capacity is given by
as the following
proposition
examples,
shows.
For every finite part D of G, the real function m D
(i) and
(iii)
capacity.
evidently hold.
The constant
I can be
(iv).
Next we prove the decisive Therefore,
is greater
IAI. There are some less trivial
on F(G) defined in 2.2.7 is an invariant Proof.
- m(A)
for every A
calculate
strong
subadditivity
the difference
which is the integral
mD(A)
property
+ mD(B)
for the counting measure
(iii).
mD(AnB)
- mD(AUB),
on AUB of the function
IA.I(D-IAC ) + IB.I(D-IB c) - !(ANB).I(D-I(A~B)C ) - I(D-I(AuB)c ) This function
is always non-negative,
dering every possibility, 2.2.13.
Definition.
greatest
The mean value of an invariant
capacity.
capacity m is the
lower bound q(m) of the ratio m(A)/IA I where A is a finite non-
empty part of G. Due to the property ties,
as one can see by carefully consi-
and thus m D is an invariant
q(m)
2.2.14.
Remark.
whereas
the function
homogeneous
(2.2.10
(iv)) of invariant
capaci-
is finite. The set ~ of all invariant m-->
q(m)
capacities
is a convex cone,
is clearly increasing
and positively
on E.
The existence
of the ameaning
filter
is proven when,
for every finite
part D, the mean value q(m D) is equal to 0. It is clear that the following
mD ~ Therefore, point,
d~D
subadditivity
result holds:
m{d}
we must now state the result for the parts reduced to a
and show the subadditivity
property of q on the cone E.
24
Let then d be an element of G. If d generates Otherwise,
a finite group F, one has
when n tends to infinity,
(i/IFl).m{d}(F)
= 0 .
the limit of the ratio
(i/I Anl ) .m{ d} (An) where
A n = {di,i=O,..,n-l},
The subadditivity
is equal to O.
property of q is the most important point of the proof.
In order to demonstrate
it we will rely on several
But first we must state a definition 2.2.15.
Definition.
support,
Let f be a non-negative
tive coefficients,
of f as a combination
we select a special
0 = s 0 < ~i < "'" < o k
values of f in ascending The following
special
2.2.16.
of indicators
one as follows.
be the finite sequence of the different
i=k ~ (~i-~i_l) I i= 1 " (f>=i) of f is called its pyramidal
Let m be a strongly
subadditive
decomposition.
function on F(G),
and f
function with a finite support on G.
Among all possible decompositions with positive
coefficients,
est lower bound to the sum Consider
f =
of f as a combination
the pyramidal
decomposition
of indicators gives the great-
[ ~Am(A).
an arbitrary
decomposition
of f:
~ ~AIA Ael
Let J be the set of all finite parts of G which is obtained by making repeated unions
and intersections
Then J is finite and the finite parts Choose a maximal of elements
(f~i)
element among all finite
in J containing
Every indicator were not,
with posi-
order.
decomposition
Lemma.
a positive
Proof.
with a finite
equality holds:
f = This
function,
lemma.
on a set G.
Among all decompositions Let
theorems.
and prove a combinatorial
the
I A is constant
(f~i),
of elements
from I
of I.
belong to it.
strictly increasing
and call this sequence
on every non-empty
the finite part K' = (AnKi+I)UK i
set Ki+ ~ K i ;
sequences (KI,.,Kn). if it
would be strictly between K i
25
and Ki+ 1 for the order, and this would contradict the maximality of the sequence. We use an Abel transform to obtain
(~i-ai_l) m(f>~ i)
=
~km(f=~k) +
k-I ~ ~i(m(f_->~i) - m(f>~i+l)) 1
Inserting the other K i of the sequence, we see that the first sum is equal to n f(i) .(m(Ki)-m(Ki_l))
+
f(1) .m(K I)
where f(i) is the constant value of f on Ki\Ki_ 1 (on K 1 for f(1)). Replace f by the given decomposition to get the following expression of the sum relative to the pyramidal decomposition: n
A~ei ~A
~ (A(i)'(m(Ki)-m(Ki-l))
+ A(1)'m~KI)
)
Because of the strong subadditivity property of m, the difference m(Ki)-m(Ki_l) equal to i.
is less than or equal to
m(A~Ki)-m(A~Ki_l) , when A(i) is
We then get the inequality
(~i_~i_l).m(f>~i)
~.Tnk.~.T -nk
and its image is contained
for every k, the kernel Ker(h)
in the kernel
contains
.
is a one-to-one of h.
a subgroup
isomorphic
to
S K and is therefore not solvable.
2.4. REFERENCES
For the existence and Krylov
of invariant probability measures,
to Bogoliubov
(I).
Invariant means on groups are examined by Greenleaf Markov-Kakutani also by Bourbaki groups).
refer
theorem is discussed (3)
(I).
of course by its two authors but
(with a generalization
to the case of solvable
34
Regarding paper
the existence
of the ameaning filter,
(I) or refer to Moulin Ollagnier
see F~Iner's
and Pinchon
original
(2,7) for an alter-
nate proof and a study of locally compact amenable groups.
3. ERGODIC THEOREMS
3.1. INVARIANT LINEAR FUNCTIONALS
3.1.1. Ergodic theorem. Let E be a real vector space, s a sublinear function, and T a right action of an amenable group G by linear one-toone mappings preserving s on E. Then, for every f of E, the following holds: Sup ~(f) ~eK(E,s,G)
=
Inf AeF(G)
(I/IAI).S(gYAf.Tg)
=
lim sup (i/IAI).s( [ f.T g) M geA
Proof. Since G is amenable, there exist linear invariant functionals bounded by s on E. Denote by K(E,s,G) the convex and compact set consisting of all these functionals and let ~ be one of them. Then, for every f in E, ~(f)
=
(I/IAI).~( ~ f.T g) geA
and the two inequalities easily follow Sup ~(f) ~eK(E,s,G)
~
Inf AeF(G)
(I/nAl).s( X f.T g) geA
lim sup (I/IAI).s( ~ f.T g) M geA Consider the function p on E given by p(f)
=
lim sup (i/IAI).s( X f'Tg) M geA
So defined, p is a sublinear function and, according to 1.1.7, is the least upper bound of all linear functionals below it.
36
In order to complete
the proof,
convex compact sets K(E,s,G) The first inclusion,
we have to show the equality of the two
and K(E,p).
K(E,s,G) ~ K(E,p),
tivity property of s gives
is already proven.
the inclusion of K(E,p)
The subaddi-
in K(E,s).
Now the only thing to be proven is that a linear functional, p on E, is invariant,
i.e. equal
to 0 on the elements
bounded by
f-f.T h with f in E
and h in G. What is true for f is also true for -f and we have only to show that p(f-f.T h) is equal
to 0.
Let us calculate p(f-f.T h)
=
lim sup (I/IAl).s( M
~ (f-f.Th).T g) geA
lim sup (i/IAl).(s(f)+s(-f)).m{h}(A) M 3.1.2.
Corollary.
As the upper
limit along the ameaning
the theorem above is equal to the greatest tity on the set of all non-empty
filter used in
lower bound of the same quan-
finite parts of G, this upper
limit is
in fact a limit. 3.1.3.
Example.
continuous
Consider
the usual vector
near function
s defined
for every continuous
a right action that preserves
function
to the limit p(f) of the ergodic
3.1.4.
Corollary.
number p(f), For an upper
Proof.
on X, is equal
along M
I foT ). geA g
In the above situation,
functions
it is possible
functions
on X with values
semi-continuous
measure ~ on X, ~(f) eventually
averages
not only for continuous
semi-continuous
s on C(X).
f on X, the least upper bound of all
~(f), where ~ is an invariant Radon probability measure
(I/IAl)'s(
of all
space X, and the subli-
in 1.1.3. When acting on X by homeomorphisms,
the amenable group G induces Then,
space C(X) consisting
real functions on a compact Hausdorff
to define the
on X, but also for upper
in the interval
E-~, +~]
function f and an invariant Radon probability
is well defined by regularity;
and p(f), which is
equal to -~, is still the least upper bound of all ~(f).
Consider
the upper
the value ~ (f) to ~.
semi-continuous
function on K(C(X),s,G)
giving
37 Because
function p is non-decreasing,
corollary
1.3.7 of Dini's
lemma
gives us Sup ~eK(C(X),s,G) The converse 3.1.5.
inequality
Definition.
~(f) holds
A real
=
Inf ~eC(X),~f
and the proof
function
p(~)
~
p(f)
is achieved.
c on the set F(G) of all finite parts
of G is said to be subadditive
if c(~)
decomposition
of a finite part A as a combination
indicators following
of the indicator
of subsets inequality c(A)
Function
F(G)
Remark.
coefficients,
of
1 A = ~ ~BIB,
the
~ ~BC(B)
The subadditive there
Remark.
to 0 and if, for every
holds:
g of G, the numbers
for which
3.1.7.
of it with positive
c is said to be invariant
every element 3.1.6.
g
is equal
if, for every finite part A of G, and c(A)
functions
is a sublinear
According
and c(Ag)
are equal.
are exactly
extension
to lemma 2.2.15,
the functions
on
to the cone C~(G).
strongly
subadditive
functions
are subadditive. 3.1.8.
Lemma.
Let B be a finite non-empty
part A of G, the following I{ geG,BgcA} I The positive
exp(-[t[ ~) is of a positive
transform of a probability,
Because
i.e.
It is possible,
of the "El6ments
1 at 0, it is the Fourier
to Bochner~s
result
theorem.
in Probability for instance,
d'Analyse"
transform is one-to-one,
type.
Theory that can be to solve exercise
by Dieudonn4.
the stability of p~ comes
of the function exp(-]t]~).
The law of the average
of n independent
random variables with a law pe
is then that of the homothetic (n ((I-~)/~) ) .X
of a random variable whose
law is ~ .
If we denote by ~ the Fourier the Fubini's
transform of p~, a simple application
theorem shows that the integral (I
- Re~(t))/t
of
of
B+I
is the product of the integral
over R for the Lebesgue measure
of
(I - cos u)/u B+I
by the expectation
for p~ on R of Ix[ B
If the real number ~ strictly for the Lebesgue measure
lies between 0 and 2, the integral
of the function
over R
2
50
(i - cos u)/u B+I
is finite and the two other integrals It is then easy to see that is strictly The series
are then simultaneously
Ixl B is integrable
for ~
finite
if and only if B
less than ~. that we are interested
as the integral
for ~
in has,
for every a, the same nature
of the function
Ixl (=-II~) and therefore
diverges.
The probability ~ 3.3.3.
Remark.
amenable tion.
group,
then provides
The existence
us with the counterexample
of ameaning
for which Birkhoff's
Only partial
results,
sequences
sought.
of finite parts of an
result holds,
is still an open ques-
such as for groups with a polynomial
growth,
are known.
3.4. THE SADDLE ERGODIC THEOREM
This section is devoted pological 3.4.1.
dynamical
to the proof of a minimax
sytems; we give this result in a very general
Saddle ergodic
theorem.
subset of a real locally convex Hausdorff
following
to toform.
Let K be a convex and compact non-empty
T be a left action of an amenable one mappings
theorem related
topological
group G by affine
on K, and let f be a real function on
vector
space;
continuous F(G) x K
let
one-towith the
properties:
i)
for every x in K, the partial
function
in the sense given in definition ii)
for every finite part A of G, the partial is concave and upper semi-continuous
iii)
f(.,x)
this function
is invariant,
=
function
f(A,.)
on K
i.e. for every g in G, every
finite part A of G and every point x of K, f(Ag-l,Tg(x))
is subadditive
3.1.5
f(A,x)
51
Then,
the following
Inf AeF(G)\{~}
minimax
(iii AI ) .Sup
f(A,x)
for the subset
action
of G.
Proof.
For every element inequality f(A,x)
of all invariant
of K under
the
Sup f(A,t) teK
of these subadditive
the limits
points
x in K G and every finite part A of G, the
along M of these averages taking
(ill AI ) .f(A,x)
Sup Inf xeK G AeF(G)\{~}
holds: ~
Also the averages Because
=
xeK
where K G stands
following
equality holds:
invariant
functions
and the limits
are in the same order.
along M are equal
to the greatest
lower bounds,
the least upper bound on all x in KG, we get the inequality
in
one direction Sup xeK G
Inf (I/IAl).f(A,x) AeF(G)\{ ~}
In order
to prove
function
on F(G)
the converse defined
T(A)
=
decomposition
lower bound,
=
call ~ the subadditive
and also the limit along M, of the
is nothing
to prove.
fix a finite part B of G and consider
of the indicator
iA
inequality,
by
ratio (I/IA I).~(A). If ~ is equal to -~, there case,
Inf (I/IAI).Sup f(A,t) AeF(G)\{ ~} teK
Sup f(A,t) teK
Let = be the greatest
In any other
=
> P.
4.2.5. Remark. The previous relation ">>" is a preorder relation on the set of all finite partitions of a given probability space; and the equivalence classes of the corresponding equivalence relation (P>>Q and Q>>P) can be identified with the partitions of the unity between non-null idempotents in the quotient algebra ~/~. We shall identify a partition with its equivalence class for the previous equivalence relation. 4.2.6. Proposition.
For the previous order relation, every two parti-
tions have a least upper bound. Proof. The partition R, which is defined by its atoms
Rij = Pi~Qi, is
clearly a least upper bound for the set (P,Q). 4.2.7. Definition. The entropy of the partition P = (Pi) is the entropy of the probability vector (~(Pi)); this entropy is denoted by H(P). 4.2.8. Proposition. Entropy is a strictly increasing function on the ordered set of all partitions of a given probability space. Proof. Suppose Q finer than P and use the subadditivity of n to derive H(Q)
=
~ ( ~ n(~(Qj))) l Qj Pi
=> ~ n(~(Pi)) l
Equality can only hold if, for every atom Pi of P, the number n(~(Pi)) is the sum of all n(~(Qj)) where Qj is contained in Pi" Strict concavity of the logarithm then implies that this last equality is only possible when one of the ~(Qj) is equal to ~(Pi); and entropy is then strictly increasing.
57 4.2.9. Proposition. Entropy is strongly subadditive on the set of all finite partitions, i.e. verifies, for every triple (P,Q,R) H(PfQVR)
+
H(P)
__< H (PVQ)
+
H (PVR)
Proof. This proof is apparent from the strong subadditivity property of H on the set of all probability vectors (proposition 4.2.2). 4.2.10. Definition.
Given a o-algebra
6 contained in ~ a n d
a finite par-
tition P of (X,~,~), the conditional expectations E(IPiI~) constitute a partition of the unity almost everywhere. The integral of the entropy of this random probability vector is called the conditional entropy of P with respect to D and is denoted by H(PI6): H(PI~)
=
4.2.11. Proposition.
[ I n(E(ip.I~)) l V(~) and V - - > ~(V), defined in the two previous propositions between positive local specifications and cocycles, are inverse of each other. There is no difficulty in calculating the proof of this outcome.
94 6.2.7.
Proposition.
the Gibbs measures
Given a pair
(V,~), where V = V(~)
and
for ~ are exactly the quasi-invariant
~ = ~(V),
measures
for
the cocycle V. Proof.
Let us first prove that a Gibbs measure
for V; therefore,
we have to show that,
for ~ is quasi-invariant
for every element
g in C(X) and
every point x of S,
~ (g.exp (Vx))
=
~ (go~x)
Because p is a Gibbs measure
~(f)
=
for ~, we get
~(~x(f))
=
~((f + fOTx.exp(Vx))/(l
+ exp(Vx)))
Then
p((f.exp(Vx))/(l Choosing
+ exp(Vx)))
=
f = g.(l + exp(Vx)) , we get the quasi-invariance
In order to prove that a quasi-invariant measure
p((fo~x.exp(Vx))/(l
measure ~ for V is a Gibbs
=
~(( ~ fOTB.exp(VB))/( BaA
local
Remark.
specification
B~A ((f°~B)/(CcA [ exp(Vc°~B))
=
~ BcA
=
p (f)
((f.exp(VB))/(
of the Gibbs measures
that a Gibbs measure
a mass which is proportional
are interesting:
probabilities;
and the
of the energy
(we shall
of some measures
under the
to prove a result of Ruelle's).
Given a cocycle V = (V A) on X, there exists
J = (J(A)) of real numbers
the
gives to the configurations
to the exponential
the quasi-invariance
group of modifications
Proposition.
~ exp(Vc))) CCA
involves given conditional
means
use in the next chapter action a wider
~ exp(Vc))) CcA
=
Two properties
quasi-invariance
6.2.9.
relation.
for ~, let us simply calculate ~(~A(f))
~(HAf))
6.2.8.
+ exp(Vx)))
a family
indexed by the finite parts of the set S, such
95 that the Fourier
transform
of the continuous
function
V
is given by X
Proof.
ix(A)
=
-2J(A)
if xeA
ix(A)
=
0
if
Using
Fourier
the cocycle
coefficients
x~A
relations
Vx(A)
V x + VxO~ x = 0, we discover
are equal
that the
to 0 when the finite part A does not
contain x. The other
cocycle
that contains
relations
ix(A)
the existence
Imagine
Fourier
=
Vy(A)
ix(A)
-
= Vy(A).
of the family J, the "-2" being related
that there exists coefficients
the increments
Notice
for a part A
to the
interpretation.
the Fourier with
Vy(A)
-
that is to say to following
, lead,
both x and y, to the equality
ix(A)
Hence
V x + Vyo~ x = Vy + Vxo~y
coefficients that J(@)
E representing
-2J(A)
a cocycle
You would
and that on X
then find the
that we have just built.
function,
of energy
the energy,
and then build
V A = Eo~ A - E of the energy.
is not determined,
tation of an energy the differences
a function
of E are J(A);
which
is coherent
with our interpre-
only defined up to an additive
are actually
An interaction
constant;
significant.
6.2.10.
Definition.
indexed
by the set of all finite non-empty
is a family J = (J(A)) parts
of real numbers
of S, such that, for
every point x of S, the mapping
A --> J(A).ixe A is the Fourier
transform
These functions 6.2.11.
Definition.
if J(A)
is equal
6.2.12.
Definition.
J(A)
is equal
of a continuous
then verify
the cocycle
An interaction
function
on X.
relations.
is said to satisfy
Ising's
condition
to 0 for every finite part A with an odd cardinal An interaction
to 0 whenever
number.
J is said to be a pair interaction
the cardinal
number
of A is greater
if
than or
96 equal to 3. Notice that a function J on the set of all finite parts of S which verifies this condition,
is an interaction if and only if, for every point x
of S, the series J({x,y}) where y runs in S converges. This results, 6.2.13.
for instance,
Definition.
from proposition 6.1.2.
An interaction J is said to be attractive
if the
function J is non-negative. A non-negative function J on the set of all finite parts of S is an interaction if and only if, for every point x of S, the series
(J(A),xeA)
of real numbers converges. To prove this equivalence,
apply proposition 6.1.2 to the unit configu-
ration.
6.3. PHASE TRANSITIONS
6.3.1. Remark.
Certainly,
one of the most important problems
tical mechanics on a lattice is the phase transition problem,
in statisi.e. deci-
ding whether there are many different Gibbs measures for a given specification. When J is an interaction,
~J is also an interaction for every positive
real number 8. For some types of interactions, the comparison theorem:
it is possible to state
if there is a phase transition for BJ, there is
also a phase transition for ~'J~ whenever B' is greater than B. On the other hand,
the Kirkwood-Salsburg
little further on, postulates
theorem,
that we shall prove a
that in some cases there is no phase
transition for B adequately minute. Therefore, verifies orems,
the specific phase transition problem for an interaction which
the hypotheses of the comparison and the Kirkwood-Salsburg
the-
is knowing if there are several Gibbs measures for ~ adequately
large. Classical
interactions,
like attractive pair interactions,
verify
all these hypotheses. The problem of phase transition is a sizable one and we only give here the general 6.3.2.
theorems used to simplify this particular work.
Definition.
of all continuous convergent.
Consider the vector subspace A(X) of C(X) consisting functions on X whose Fourier series is absolutely
97
Define
then a real
function
]IIflll This
function
=
is less
bound of the norms
Proof.
measure
function
lity ~(f.(l + th(Vx/2))
V consists
of functions
and if the least upper quasi-
measure
on X that verifies
f + f°~x = 0, the equa-
=
~(f.(2exp(Vx/2)/(exp(Vx/2)+exp(-Vx/2)))
=
~(f.2exp(Vx)/(l
=
~(2fo~x/(l
-
then an operator
(I/]AI).
K(1)
=
0
Because
the °A generate and continous
the iden-
on the elements
OA
~ oA.th(Vx/2) xeA
a dense
subspace
on A(X) whenever
l[Ith(Vx/2) lll is finite.
verifies
(A,x) where x is in A.
K on A(X) by its values
=
+ exp(Vx)))
~(V) necessarily
= 0 for every pair
K(o A)
defined
+ exp(Vxo~x)))
0
for the specification
+ th(Vx/2)))
+ exp(Vx)))
~(2f.exp(Vx)/(l
=
norm of the operator
for V. For every point x of S,
this measure:
~(f.(l + th(Vx/2))
Define
of the norms.
= 0 holds.
we can calculate
tity ~(OA.(l
of A(X),
a subalthat the
for V.
Let ~ be a quasi-invariant
A Gibbs measure
to the product
If the cocycle
are elements
is, moreover,
]II.lll, meaning
lllth(Vx/2)II I is less than I, there is a single
and every continuous Indeed,
for the norm
than or equal
theorem.
V x such that all th(Vx/2)
than the supremum norm on C(X),
for it. Space A(X)
and a Sanach algebra
Kirkwood-Salsburg
invariant
it is finer
is complete
norm of the product 6.3.3.
I If(A) l AeF(S)
lll.III is a norm;
and the space A(X) gebra of C(X)
on A(X) by
If the condition
K is strictly
of A(X),
the operator
K is well
the least upper bound of the norms of the theorem
less than i.
is fulfilled,
the
g8
The restriction verifies
of ~ to the subspace A(X)
the equation
The operator
(I + K*)(~)
is a linear functional
(I + K*) has then an inverse
6.3.4.
of X.
in the dual space of A(X); and
there is only one solution for the previous thus,
that
= h, where h is the Haar measure equation
in this space and,
in the set of measures. Corollary.
are elements
If the continuous
of A(X),
functions V x that define the cocycle
and if the least upper bound of their norms in this
space is less than 7/2,
there is no phase transition
for this cocycle.
For every element ~ of A(X), whose norm is less than i, we can define th(~)
as the sum of a power
series;
ded by tg(lll~Ill). The conclusion 6.3.5.
Example.
Let us describe
S = Z n and the attractive
The interaction
and we can calculate
depend on x because When n is equal
constant)
J is equal
It is clear that the functions A(X),
the Ising model.
pair interaction
(where J is a strictly positive the lattice.
and the norm lllth(~)IIl is then boun-
is clear.
the norm
the interaction
6.4.1.
cocycle belong to invariant. immediately
in the Ising model
confirms
in dimension i for
B.
llIth(Vx/2)lll = 2 th(2J),
that there is no phase transition when th(2J)
which
shows
is less than I, i.e. if J
(Log3)/4.
6.4. SUPERMODULAR
INTERACTIONS
Definitions.
Denote by ~ the order on the product
nl ~ n2
t. .~
in
lIIth(Vx/2)III ; this norm does not is translation
any v a l u e of the inverse temperature is 2, we get
= J
to 0 otherwise.
to i, lllth(Vx/2)lll = th(2J), which
When the dimension
the lattice
for the pairs of neighbors
of the corresponding
that there is no phase transition
is less than
Consider
J defined by J({x,y})
VxeS,nl(X)
set X = {-I,+I} S defined by
=< n2(x )
99
It is the product
order of all natural
orders
of the factors;
it is not
a total order. A continuous decreasing
function
for this order.
monotonic
continuous
functions
belong
6.4.2.
V x + VyOT x = Vy + VxOTy
function ~
the cone of all these
on X; to be specific,
Given two different
VxoTy - V x This
Let us call then M(X)
functions
if it is non-
all coordinate
to M(X).
Definition.
relation
f on X is said to be non-decreasing
xy
=
points
x and y of S, the cocycle
leads to the equality
VyOT x - Vy
has the following
=
~xy
Fourier
transform:
A
~xy(A)
=
4J(A) . IxeA. lyeA
When all functions
+xy.Ox.Oy
to be supermodular.
This
are non-negative,
is the same as saying
of S, the function V x is non-decreasing 6.4.3.
Example.
A typical
vided by an attractive
example
the interaction that,
for every point x
on the subset {o x = -i} of X.
of a supermodular
pair interaction.
is said
interaction
is pro-
The function Sxy then reduces
to 4J({x,y})OxOy. 6.4.4. modular
Proposition.
Let A be a finite part of S and # be a local
specification.
that n 1 ~ n 2. Denote by ~+n
Let n 1 and n 2 be two elements
the configuration,
which
tion of the element
$ of {-i,+i} A and of the element measures
on {-i,+i} A, verify
the Holley relation:
for every pair
#l(~iV$2).~2(~lh$2 )
Proof. product
~ --> ~A($+nl)
(EI,$2)
We have to prove,
~
of {-I,+I} S A such
is the result
The two probability
of elements
super-
of the concatena-
n of {-I,+I} S A
and ~ --> #A(~+n2),
defined
of {-i,+I} A
#i(~i)-~2(~2 )
for every pair
(~i,~2)
of elements
of the
space {-i,+I} A, the inequality
~A((~IV~2)+nl ).~A((¢IA~2)+n2 )
>
#A($2+n2 ).~A($1+nl )
1O0
This
inequality
is equivalent
to
~A( (~ I W 2)+n i)/~A(~ l+n 1 ) According equal
to proposition
6.2.6,
to exp(VB(~l+nl)) , where
is greater points
than $1(x).
at which ~2(x)
The right-hand
= +i and $1(x)
to be demonstrated
the value
This results
B is the subset is equal
is supermodular;
Theorem.
product
[~,~
to the product
or-
of X of all configurations
of B.
of B in an arbitrary
Then, 7' is greater is non-decreasing
~,~
and V B is also non-decreasing
Let 7' and 7" be two probability
and that verify
order.
on the subset
space {-I,+I} A which give a positive
this set,
to exp(VB((~iA$2)+n2 ) .
that, with respect
term in the sum is non-decreasing
6.4.5.
of A of all
Vbl + Vb2°~ b I + • • + VbnO~bl o • • oT bn_ 1
=
where bl, .... b n are the points interaction
is
= -I.
on the subset
-i at all points
side of the inequality
for the part of A on which ~2(x)
from the decomposition
VB
Every
the left-hand
In other words,
der, V B is non-decreasing
~ A(~ 2+n 2)/~A( (~ IAE 2)+n 2 )
B stands
side of the inequality
It then remains taking
>
the Holley
than or equal
for the product
mass
relation
to 7",
measures
because
the
on [ ~ , ~ . on the finite
to every element
of
(6.4.4).
i.e.
for every function
order, ~'(f)
is greater
f which
than or equal
to ~"(f). The proof of this result
can be found in Holley
6.4.6.
to the previous
Corollary.
Thanks
the least upper bound of ~A(f) is equal 6.4.7.
to 1 at every point
of ~
= HA(f)(T) , weakly
is a Gibbs measure +
(f)
=
results,
when f belongs
at the configuration
to M(X),
T, which
of S.
Proposition • The family
where ~ ( f )
is reached
(I).
(~+A ) of Radon probability converges
when A tends
for ~ and verifies,
Sup ~ (f) eG(~ )
measures
on X,
to S. The limit ~+
for every f in M(X),
101
Proof. When f belongs functions
to the cone M(X) of all continuous
on X, the following
~A(f) (I)
=
equality holds
non-decreasing
for every finite part A of S:
S(~A(f))
And this directed family of real numbers has a limit when A tends to S; this
limit is the least upper bound of all ~(f), where ~ is a Gibbs
measure
for ~.
This family of probability measures ments
(fl
then simply converges
for all ele-
f2 ) of C(X), where fl and f2 are in M(X).
The subspace,
consisting
of these differences,
is dense in C(X)
uniform norm and the family is equicontinuous.
for the
Hence the existence
of
the weak limit ~+ is proven. For every f in M(X), ~+(f) this
infimum is equal
= Inf(s(~A(f));
according
to theorem 6.1.7,
to the least upper bound of all ~(f), where ~ is
in G(~). + . In order to verify that p is actually a Gibbs measure for =, notice + + simply that ~A(~B(f)) = ~A(f) whenever A contains B, and take the limit when A tends to S. 6.4.8. weak
Remark.
The probability measure ~- is similarly defined as the
limit of the ~A(.)(---T). It gives the least upper bound of all Gibbs
measures 6.4.9.
for the non-increasing
Proposition.
specification
continuous
functions.
There is a phase transition
if and only if the two particular
for a supermodular + measures ~ and ~
local are
different. Proof.
The condition
is obviously
sufficient because ~
and ~
are Gibbs
measures. If they agree,
proposition
6.4.7 and remark 6.4.8 show that a Gibbs
measure
for ~ takes necessary
because
this subspace
Gibbs measure 6.4.10.
values on the subspace
is dense in the uniform norm,
for ~.
Proposition.
is a phase transition
Let ~ be a local
The condition
is also necessary,
supermodular
specification.
There
for ~ if and only if there exists a point x in S
such that u+(~x ) is strictly greater Proof.
generated by M(X); there is only one
is obviously
than ~-(~x ).
sufficient.
we have only to demonstrate
In order to prove that it the following
inequality:
102
(u+ - ~-)(pA ) where PA is the positive
PA In this case,
=
+® Because
that Vxorx_ n
tends to V--x when n tends to infinity.
the interaction
is invariant,
and we use now the strong mixing
=
p+(for x)
Vx_ n is the translate
property
VxoT n of Vx;
of ~+ to get
+ (for x) In order
to conclude
is equal
to i.
=
~+(f.exp(Vx)).~+(exp(Vx ))
the proof,
we still have to show that ~+(exp(Vx))
Hence we must note that the previous function, proof. 7.4.7.
and in particular
Corollary
i.e.
equal
sition
to ~-
for the constant
(proof of theorem
for the U-cocycle
equality
7.4.2).
V, it is in particular , and there
is no phase
holds
for every continuous
function
Because ~
invariant
+
i, achieving
is quasi-invariant
under
transition
the
the reversal
according
3,
to propo-
6.4.9.
7.5. REFERENCES
The characterization measures
of the invariant
for a suitable
by this author The original
continuous
proof
of the uniqueness by Ruelle
The study of attractive condition
described
invariant
way
in the last sec-
pair interactions
greater
in dimension
for which J is proportional
is then the summability
is necessarily
in a general
(5).
(i).
been done for the interactions exponent
result
as the equilibrium
is proven
in a joint work with D. Pinchon
tion was achieved
interaction
Gibbs measures
function
to n
of the series
than I. If it is greater
i has ; the
and the
than 2, Ruelle's
116
theorem shows that there is no phase transition verse temperature
stated that there is a phase transition therefore
for
a comparison with the hierarchical
= 2, known as Anderson's model, and Spencer
for any value of the in-
B. For an ~ strictly between 1 and 2, Dyson B adequately model.
large.
He used
The borderline
case,
was only solved recently by FrShlich
(I); they showed that there is a phase transition
values of the parameter.
(1,2)
for large
8. EQUIVALENCE OF COUNTABLE AMENABLE GROUPS
8.1. TILING AMENABLE GROUPS
8.1.1. Definitions. The sequence of segments in Z, (An = {0 .... n}), encountered at the beginning of this text is the prototype for all F~Iner sequences in countable amenable groups. But the elements of this sequence,
the segments An, have an interesting
property which is a decisive tool for solving some problems of ergodic theory:
they are tiling sets.
A finite part of a group,
for which it is possible to tile the whole group
with some pair-wise disjoint right translates of it, is called a tiling set. This notion is therefore in fact related to equivalence classes of finite parts under the right translations which can be called forms. Some authors,
Ornstein and Weiss in particular,
have used F~iner sequences
consisting of tiling sets in groups other than Z. Notice that, in all known amenable groups,
it is always possible to con-
struct explicit F~Iner sequences consisting of tiling sets. This means that the class of groups with arbitrarily invariant tiling sets is stable, like the class of amenable groups, under the constructions we described in section 2.3
(see Moulin Ollagnier and Pinchon
that
(3)).
But, as we said in chapter 2, no structure theorem for amenable groups is stated herein. Connes,
Ornstein and Weiss have introduced the notion of almost tiling:
with a finite number of different forms, each of them being as invariant as desired,
it is possible to cover the greatest part of the group with
almost disjoint right translates of these forms. This property is true for all amenable groups and is the subject of the next lemma.
118
8.1.2. Tiling
lemma. Let A, A and D be three finite parts of a group G
and let the unit element e of G belong Then,
there exists a partition
right
translates
of subsets of A, such that the proportion
in A for which all left translates atom,
to D.
of A, whose atoms are contained
is greater
dg by elements
Let A' be the subset of A consisting
is contained
of D are in the same
than
(I - m D ( A ) / I A I ) . ( I A I / I D - I A I ) . ( I
Proof.
in some
of all points
- m D ( A ) / I A I)
of all points
g such that Dg
in A.
By definition,
we get
IA - A'I = mD(A)
Denote by T the set of all total orders on A-~A = {geG,Ag~A~@}. Consider P(T)
the elements
gl .... gk''"
as the partition of A whose
following
A1
=
AnAg 1
A2
=
(A~Ag2)\A 1 k-i (A~Agk)\( U A i) 1
The notation P(T,x) measure
then stands
for the class of x in the partition P(~).
the uniform probability measure
~ on T, i.e. the probability
giving to every point ~ of T the mass
For a given element x in A', the probability P(~,x)
is exactly the probability
the first element This
of the
finite sequence:
"'" Ak =
Consider
of A-~A in the order T, and define atoms are the non-empty elements
I/(IA-~AI)!. that Dx is contained
that Dx is contained
in the order T such that Ag meets Dx.
last event depends only on the restriction
subset A-~D.x; probability Therefore,
in
in Ag, where g is
and its probability
of the order • to the
can be easily obtained because
for a given element g being the first in A - ~ the probability
is equal
of the event that we are searching
the ratio l{g,AgcDx}I/I{g,Ag~Dx#@}l
the to
is equal
to
119
i.e.
to the ratio
(i
Summing
mD(A)/IAI).(IAI/ID-I.A
-
I)
on all x in A', we get the expectation
E( [ iDxcP(~,x )) xeA
~
for
E( ~ IDxcP(~ x)) xeA' ' (IA'I).(IAI/ID-~AI).(I
The proportion positive
(I
There
of all x of A such that Dx is contained
function
of T whose expectation
is bounded
mD(A)/;AI).(IA I/ID-I.AI).(I
-
then exists
the above number.
an order T for which The corresponding
expected inequality. triple (A,A,D).
in P(T,x)
is a
below by
- mD(A)/IA ])
this proportion
partition
Such a partition
- mD(A)/IAI)
P(T)
in greater
thus verifies
is said to be adapted
than the
to the
8.1.3. Iterated tiling lemma. Let A, A 1 . . . . , An, and D 1 .... , D n be finite parts of a group G such that
eeD I c D 2 ~ There
then exists I) 2)
a family
for every right
... c D n (PI ..... Pn ) of partitions
subscript
translates
for every i from 1 to n-l, tion of Pi' i.e.
3)
the proportion is contained ponding
(i
Proof.
i between
of subsets
Consider
1 and n, the atoms
of Ao l the partition
Pi+l is a subparti-
the atoms of Pi+l are unions
of the points
of Pi are
of atoms of Pi
x of A for which every set D.x l containing x of the corres-
in the atom Pi(x)
partition
-
of A such that
m D (A)/i n
Pi is greater
than
i=n AI. ~ (IAil/ID?llAil).(l i=l
the finite probability
space
- mDi(Ai)/IAil)
(T,~), which
of the (Ti,~i) where T i is the set of all total orders the uniform probability on it.
is the product
on A?~AI and ~i is
120
!
For every n-uple
• = (~i ..... ~n ), consider
partitions
where every P! is built as it was in the proof of the
of h
preceding lemma. by setting
A new sequence
p
Pn-I P1
Conditions
of partitions
=
p, n
=
p,
=
Pi V P2
n
Call A' the subset of A consisting
E
i=n ~ ({TeT, i=l
where
Pi(T,x)
built
from the n-uple
stands
By construction
is then defined
of all x such that DnX is contained of the event
Dix(Pi(~,x)}) x of the partition
Pi(~),
~.
of the sequence
of all Pn from the one of the P'n' the
defined
i=n j=n ( ~ ({reT,
as the following
J
of D i :increases, definition
intersection:
D~x~P'(T,x)})) J
i=l j=i
Since the sequence
of
by such a sequence.
for the atom that contains
event E can be equivalently
get the following
(PI,...Pn)
for an x in A', the probability
=
(PI ..... Pn)
n-I V Pn
1 and 2 are then fulfilled
in A; and calculate,
the sequence
this expression
can be simplified
to
of E:
i=n E
({TeT,Dix c P~(r ,x) })
=
i=l
Because
the factors
get the probability
of the product
space T are mutually
independent,
we
of this event as the product
i=n 1 H (I - mD(Ai)/IAil).(IAil/ID.7~.Ail).,,,,, ~ , i=l l Conclude
as in the previous
A family of partitions tiling
lemma by summing
that verifies
and is said to be adapted
over all x in A'
the inequality
is called
to the given 2n+l-uple.
an iterated
121
8.1.4. Definition.
Denote by T O the subset of all total orders on G which
are isomorphic to the natural order of Z, i.e. the orders without a first element, without a last one, and for which there are only finitely m a n y elements b e t w e e n two given ones. Set T O is a subspace of the Hausdorff compact space T of all total orders on G, and it is invariant under the action of G d e s c r i b e d in 2.1.3. When the amenable group G is countable,
this set is not empty.
From now on, we shall work under the a s s u m p t i o n that G is countable. N o w we want to know if there exists, lity measures
among all invariant Radon probabi-
on T, a p r o b a b i l i t y measure ~ such that ~(T 0) = I, when
the countable group G is amenable.
Because T O is not compact, we cannot
apply the fixed-point p r o p e r t y to get the answer.
Since every Radon p r o b a b i l i t y measure on T is inner regular, we get
(T 0)
=
Sup ~ (K) KcT 0
w h e r e K runs in the set of all compact subspaces of T contained in T O .
R e v e r s i n g the order in which we take the least upper bounds, we get
Sup ~(T 0) ~eK(C(T),s,G)
=
Sup Sup u(K) KCT 0 ~eK(C(T),s,G)
But the indicator of a compact set is an upper semi-continuous
function,
and we can use the ergodic theorem 3.1.3 to get the least upper bound of all invariant p r o b a b i l i t y measures on such a compact set.
Next, we have to study the compact sets contained in T O .
8.1.5.
Definition.
Given an element • of TO, d r stands for the function
on GxG w i t h integer values defined by
d (g,h)
=
i +
=
0
I{keG, g~k~h or h~k~g}[
if
g
=
if
g # h
h
It is a distance on G.
8.1.6. Proposition.
Let d be a distance on G with integer values.
K d of all total orders such that d
The set
is less than or equal to d is compact.
122
Proof. equal
Consider the function dg,h on T with values to the n u m b e r
is
of elements between g and h plus one if this number
is finite and to += otherwise.
This function is lower semi-continuous.
The set of all total orders such that dg,h(T) d(g,h)
in N where dg,h(T)
is less than or equal
to
is then a closed subset of T.
The set K d is the intersection of all these closed sets when g and h run in G, and it is therefore compact.
8.1.7.
Theorem.
Let G be a countable amenable group.
Then,
there exists
a Borel probability, w h i c h is invariant under the right translations,
on
the set T O of all total orders on G that are isomorphic to the natural order of Z.
Proof.
It shall be sufficient to find,
a distance d on G with integer values
for every positive real number e, such that the following holds for
the c o r r e s p o n d i n g compact set Kd:
Sup ~ (K d) ueK(C(T),s,G)
>
I -
We then find an invariant Radon p r o b a b i l ~ y measure on T that gives the whole mass to the union of all K d. This union is p r e c i s e l y the set of all total orders for which there are only finitely m a n y elements b e t w e e n two given ones.
On the other hand,
thanks to an easy invariance argument,
the set of all
total orders with a first or a last element has a measure 0 for every invariant Radon p r o b a b i l i t y measure on T. The difference is the set T O of all orders that are isomorphic to the order of Z. Thus we must look for distances on G with integer values,
in particular
ones that have the following form:
d(g,h)
=
d(g) + d(h)
if
w h e r e d is a integer function on G equal
Take a converging sequence
(l-e i)
>
to 0 at e.
(~n) of p o s i t i v e real numbers
such that
i=l
g#h
1 -
E
less than i
123
and an increasing
sequence
(D n) of finite parts,
containing
the unit
element e of G, whose union is G. Because G is amenable,
there exists,
for every subscript
i, a finite
part A i of G such that
(IAil/IDi~Ail).(I
- mD!Ai)/IAil)
>
I - ~i
i
Define
Next,
therefore
the function d in the following way:
d(e) =
0
d(g) =
IAII - i
if
geDl\{e}
d(g) =
IAnl
if
geDn\Dn_ I
I
denote by K n the following
Kn
=
compact
subset of T:
{meT, VgeD n d (e,g)
OF COUNTABLE
GROUPS
Definitions.
Endowed with the product topology of discrete
topologies,
the set H G of
all mappings from the countable Polish space.
group G in the countable group H is a
Its subspace A(G,H),
of all elements
consisting
for which the image of
the unit element of G is the unit element of H, is a closed subspace, and thus a Polish space for the induced topology. Let g be an element of G. The right translation by g does not preserve the subspace A(G,H). We must now define a mapping T g from A(G,H) following
definition Tg(a)
to itself by giving it the
on the graphs: =
{(glg-l,hlh-l),
(gl,hl)ea}
where h is chosen in such a way that (e,e) belongs h is the image of g by a. Hence, using the functional Tg(a) (g ')
notation, =
to Tg(a),
i.e. that
T g is defined by
a(g'g) .a(g) -i
It is easy to verify that the mappings
T g are continuous
and that they
constitute
an action of G on the Polish space A(G,H) by homeomorphisms.
We denote,
too, by A(G,H)
the corresponding
dynamical
system.
125
The subset I(G,H)
consisting
of all one-to-one
elements
closed and invariant under the action of G. Once again, stands
for the corresponding
The set B(G,H) mappings
But,
B(G,H)
also denotes
(a G6 in a Polish
in this system,
possible
I(G,H)
is
also
system.
is the subspace of I(G,H)
from G onto H. This subspace
of G. Once more, system
dynamical
of A(G,H)
consisting
of the one-to-one
is also invariant under the corresponding
the action
standard
dynamical
space is a Polish space).
the two groups play symmetrical
to define an action of H on B(G,H)
roles and it is
in a way very similar
to
that of G. It is not obvious, bility measure
however,
that there exists
for this dynamical
an invariant
system when G is amenable.
dard space is not a compact one and it is not possible point property because
Borel probaThe stan-
to use the fixed-
the convex set of all Borel probability measures
is also not compact. The next proposition makes
clear the symmetry between
the roles of the
two groups when acting on the set B(G,H). 8.2.2.
Proposition.
Let B(G,H)
be the set of all one-to-one mappings
from G onto H, giving to the unit element of G the unit element
of H as
its image. Consider
the action T of G on this space given by Tg(x) (g ' )
=
x(g'g) .x(g) -I
and the action U of H on it defined by uh(x)(g ') Then,
=
triction of the product Moreover,
Proof.
where
g = x-l(h)
for the topology of a Polish space on B(G,H),
mappings under
x(g'g).x(g) -I
topology of discrete
ones,
obtained
as the res-
the T g are continuous
and the U h are Borel ones. every Borel probability measure
the action of G, is also invariant The continuity
on the space which is invariant under
that of H.
of the T g is straightforward.
In order to state the Borel m e a s u r a b i l i t y
of the transformation
U h, we
126
need only show that, elements
for every pair
This makes
obvious
O ({x,x(g)=h geG
that this set is a Borel
the invariance
for the cylinder A because
set because
it is a F
O
in the
=
.o. and X(gn)=h n}
sets generate
the Borel o-algebra.
U ({x(glg)x(g)-l=hl}~...~{X(gng)X(g)-l=hn}N{x(g)=h}) geG equality where
(uh)-I (A)
=
Using now the invariance
the union is disjoint:
0 (Tg) -i (A~{ x(g-l)=h-l} ) geG of ~ under T, we obtain
~((uh)-I(A))
8.2.3.
=
~ geG
=
,(A)
(Afl{x(g-l)=h-l})
Remark.
The mapping
from B(G,H)
ment of B(G,H)
its inverse
mapping
Nevertheless,
to the Borel
tions becomes
the standard structure,
is invariant
is invariant under
Remark.
the actions
space
fact,
giving
to every ele-
is not a continuous it is a Borel
B(G,H)
the postulated
and forget symmetry
one°
isomorphism. the topology
of the two ac-
clear.
is then an easy corollary
probability
to B(H,G),
as image,
and this is an important
if we consider
leading
this property
set, we get
the following
8.2.4.
and x(g'g)=h'.x(g)})
of ~ under U, we must only verify
{x(gl)=h I and
these cylinder
(uh)-I(A)
This
as follows:
sets
=
For such a Borel
Thus,
the set of all
space B(G,H).
To state
Hence
in GxH,
such that uh(x)(g ') = h' can be decomposed {xeB(G,H),uh(x)(g')=h '} =
Polish
(g',h')
under
of the previous
proposition
one of the two actions
that a Borel
if and only if it
the other one.
A probability
measure
on B(G,H)
T and U of G and H, is ergodic
which
is invariant
for one action
under
if and only if
127
it is ergodic
for the other.
Indeed,
the measurable
because
the orbits under the two actions
8.2.5.
Definition.
if there exists
invariant
sets are the same for the two actions
Two countable
groups G and H are said to be equivalent
a probability measure
on the Polish space B(G,H) which
is invariant under the two previously This relation
is clearly a reflexive
term "equivalence" 8.2.6.
Theorem.
is a Borel
by proving
the transitivity
tensor product
Proof.
one. We justify the
of this relation.
Let G, H and K be three countable
groups.
on B(G,H)
Suppose that
and v a Borel
invar-
on B(H,K).
the probability measure ~ v
actions
defined actions of the groups. and symmetrical
invariant probability measure
iant probability measure Then,
are the same.
of ~ and v under
on B(G,K) which
is the image of the
the composition
is invariant under
from the product
space B(G,H)xB(H,K)
the
of G and K on B(G,K). The composition mapping
B(G,K),
defined by (x,y) --> z = xoy,
Borel o-algebras,
In order to state the invariance of G on B(G,K),
is measurable
allowing us to define
the image ~ v
of the measure ~ v
it is sufficient,
with respect
to
to the
on B(G,K). under
as we have previously
the action V
noted,
to prove
the equality ~ v ( ( V g)-l(A))
when the Borel
A
We can write
=
set A is a cylinder
=
the following
equalities:
n
(vg)-l({z,z(gi)=ki})) 1
set
{z(gl)=kl}~... N{Z(gn)=kn}
n
~v(~
~v(A)
= ~v(~({z,z(gig)z(g)-l=ki})) 1 n = ~ ~v(({z,z(g)=k})~A({z,z(gig)=kik})) keK 1
128
Using the definition of the measure ~ v with the tensor product ,®v, the above number is equal to the following sum: n
~ ~ {~(({x,x(g)=h}) keK heH (hi)eH n
O N({x,x(gig)=hih})). 1 n (({y,y(h)=k}) ~ ~({y,y(hih)=kik}))} 1
Employing the actions T and U, we see that this sum is equal to n
~ ~ {~((Tg)-l(({x,x(g-l)=h-l}) keK heH (hi)eH n
0 ~({x,x(gi)=hi}))). I n ~ ~({y,y(hi)=ki})))} 1
((U h)-l(({y,y(h-l)=k-1}) Next u s i n g t h e i n v a r i a n c e we find that the number
of u u n d e r T and the i n v a r i a n c e
o f v u n d e r U,
n ~ v ( ~ ( v g ) -I ( { z , z ( g i ) = k i } ) ) 1 is equal to n
k~eK h~eH (hileH n {~(({x,x(g-l)=h-l}) A n({x,x(gi)=hi})).l n v (({y,y(h-l)=k -I}) ~ ~({y,y(hi)=k i}))} I The following equality then results from the o-additivity product: n
~ v ((vg) -I (N({ z ,z (gi) =ki} ) ) I
of the tensor
n
=
~ v (N({ z,z(gi)=ki} ) ) I
and the "convolution product" is then invariant under the action V of G on B(G,K). 8.2.7. Proposition. All countable amenable groups are equivalent sense of definition 8.2.5.
in the
Proof. Since the involved relation is an equivalence one, we need only state the equivalence of any amenable group with a fixed one, Z. The measurable space B(G,Z) can be imbedded in the compact space of all total orders on G by identifying an element x of B(G,Z) with the total order on G, which is the image by x of the natural order of Z.
129
This embedding
is clearly a one-to-one mapping
space T O of T. In addition, two measurable B(G,Z)
this mapping
from B(G,Z)
is an isomorphism between
spaces and gives a conjugacy between
and the action of G by right translations
The existence results
of an invariant
from the existence
onto the subthe
the action of G on
on T O .
Borel probability measure
on B(G,Z)
then
of a similar measure on TO, which we proved
in section 8.1. 8.2.8.
Proposition.
an invariant
Given two equivalent
countable groups G and H, and
Borel probability measure ~ on B(H,G),
for every element m of the cone E(G),
we can construct,
a real function m
on the set F(H)
of all finite parts of H by setting m (A)
f
=
m(x(A))
d~(x)
B(H,G) This function m Proof.
belongs
to the cone Z(H)
and we get q(m ) ~ q(m).
These results are easily obtained by integration,
invariance 8.2.9.
follows
from the invariance
Proposition.
Given two equivalent
countable
groups G and H, and
an element m of the cone E (G), denote by i e the upper function on the compact
set T(G)
and the right
of ~.
semi-continuous
of all total orders on G defined
example
3.1.13;
denote by Je the upper
semi-continuous
defined
in the same way from the invariant
in
function on T(H)
capacity m , built
from m
with the invariant measure ~ on B(H,G). Let ~H be a Radon probability measure
on T(H) which is invariant under
the action of H by right translations. Consider
the measurable mapping
where x(T)
(x,r) --> x(r)
from B(H,G)xT(H)
to T(G)
is defined by (a,b)e~
This mapping
-~ 3
(x(a),x(b))ex(T)
sends the tensor product ~®~H to a probability measure ~G
on T(G). Then, Proof.
the integral
of Je for ~H is equal
The following
ie(~) fT(G)
equality results
d~G(T)
=
f
to the integral
of i e for ~G.
from the very definition of ~G:
i (x(T)) B (H,G)xT (H) e
d~ (x) d~H(~)
130
The integral
for p of ie(X(~))
is equal
to je(~)
and the result is
obtained. 8.2.10.
Corollary.
A countable
one is also amenable. amenable
group,
The mean value of an invariant
and the mean value of the invariant
it on another equivalent Indeed,
group which is equivalent
group,
if H is an amenable
to an amenable
capacity
on an
capacity built from
are equal.
group and,
if G is equivalent
=
=
to H, we get,
for every element m of t(G),
q(m)