Invariant sigma-algebra explained
In mathematics, especially in probability theory and ergodic theory, the invariant sigma-algebra is a sigma-algebra formed by sets which are invariant under a group action or dynamical system. It can be interpreted as of being "indifferent" to the dynamics.
The invariant sigma-algebra appears in the study of ergodic systems, as well as in theorems of probability theory such as de Finetti's theorem and the Hewitt-Savage law.
Definition
Strictly invariant sets
Let
be a
measurable space, and let
be a
measurable function. A measurable subset
is called
invariant if and only if
.Equivalently, if for every
, we have that
if and only if
.
More generally, let
be a
group or a
monoid, let
be a
monoid action, and denote the action of
on
by
. A subset
is
-invariant if for every
,
.
Almost surely invariant sets
Let
be a
measurable space, and let
be a
measurable function. A measurable subset (event)
is called
almost surely invariant if and only if its
indicator function
is
almost surely equal to the indicator function
.
k:(X,l{F},p)\to(X,l{F},p)
, we call an event
almost surely invariant if and only if
for almost all
.
As for the case of strictly invariant sets, the definition can be extended to an arbitrary group or monoid action.
In many cases, almost surely invariant sets differ by invariant sets only by a null set (see below).
Sigma-algebra structure
Both strictly invariant sets and almost surely invariant sets are closed under taking countable unions and complements, and hence they form sigma-algebras. These sigma-algebras are usually called either the invariant sigma-algebra or the sigma-algebra of invariant events, both in the strict case and in the almost sure case, depending on the author.For the purpose of the article, let's denote by
the sigma-algebra of strictly invariant sets, and by
the sigma-algebra of almost surely invariant sets.
Properties
- Given a measure-preserving function
T:(X,l{A},p)\to(X,l{A},p)
, a set
is almost surely invariant if and only if there exists a strictly invariant set
such that
.
- Given measurable functions
and
, we have that
is
invariant, meaning that
, if and only if it is
-measurable. The same is true replacing
with any
measurable space where the
sigma-algebra separates points.
is (by definition) ergodic if and only if for every invariant subset
,
or
.
Examples
Exchangeable sigma-algebra
Given a measurable space
, denote by
be the countable
cartesian power of
, equipped with the product sigma-algebra. We can view
as the space of infinite sequences of elements of
,
XN=\{(x0,x1,x2,...),xi\inX\}.
Consider now the group
of
finite permutations of
, i.e.
bijections
such that
only for finitely many
.Each finite permutation
acts measurably on
by permuting the components, and so we have an action of the countable group
on
.
An invariant event for this sigma-algebra is often called an exchangeable event or symmetric event, and the sigma-algebra of invariant events is often called the exchangeable sigma-algebra.A random variable on
is exchangeable (i.e. permutation-invariant) if and only if it is measurable for the exchangeable sigma-algebra.
on
, the
product measure
on
assigns to each exchangeable event probability either zero or one.Equivalently, for the measure
, every exchangeable random variable on
is almost surely constant.
It also plays a role in the de Finetti theorem.
Shift-invariant sigma-algebra
As in the example above, given a measurable space
, consider the countably infinite cartesian product
.Consider now the
shift map
given by mapping
to
. An invariant event for this sigma-algebra is called a
shift-invariant event, and the resulting sigma-algebra is sometimes called the
shift-invariant sigma-algebra.
This sigma-algebra is related to the one of tail events, which is given by the following intersection,
capn\inN\left(otimesm\gel{A}m\right),
where
is the sigma-algebra induced on
by the projection on the
-th component
.
Every shift-invariant event is a tail event, but the converse is not true.
See also
References
- Book: Viana . Marcelo . Oliveira . Krerley . Foundations of Ergodic Theory. Cambridge University Press . 2016 . 978-1-107-12696-1.
- Book: Billingsley, Patrick
. Probability and Measure. John Wiley & Sons. 1995 . 0-471-00710-2.
- Book: Durrett, Rick
. Probability: theory and examples. Cambridge University Press . 2010. 978-0-521-76539-8.
- Book: Douc . Randal . Moulines . Eric . Priouret . Pierre . Soulier . Philippe . Markov Chains . Springer . 2018 . 10.1007/978-3-319-97704-1 . 978-3-319-97703-4.
- Book: Klenke, Achim
. Probability Theory: A comprehensive course. Universitext . Springer . 2020 . 10.1007/978-1-4471-5361-0 . 978-3-030-56401-8.
- Hewitt . E. . Edwin Hewitt . Savage . L. J. . Leonard Jimmie Savage . Symmetric measures on Cartesian products . Trans. Amer. Math. Soc. . 80 . 1955 . 2 . 470–501 . 10.1090/s0002-9947-1955-0076206-8 . free .