nLab invariant measure

Redirected from "invariant probability measure".
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Measure and probability theory

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Algebra

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Monoid theory

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Idea

An invariant measure (a.k.a. stationary or steady) is a measure which is invariant under the action of a group or monoid, often playing the role of time, or a symmetry of the system.

An action with an invariant measure is sometimes called a stationary or steady-state system.

It is an important concept in probability theory, dynamical systems, statistical physics, and representation theory. It is one of the weakest forms to mathematically formalize the idea of equilibrium. (Stronger forms of equilibrium are for example detailed balance? and ergodicity.)

Definitions

Let XX be a measurable space, and let MM be a monoid with an action on XX via measurable functions. For each mMm\in M, denote the action on XX again by m:XXm:X\to X.

A measure pp on XX is called invariant or stationary under the action of MM if and only if for all mMm\in M, the pushforward m *pm_*p is equal to pp. That is, for each measurable subset AXA\subseteq X,

p(m 1(A))=p(A). p(m^{-1}(A)) \;=\; p(A) .

A space XX together with an action of MM and a stationary measure MM is sometimes called a stationary system. In particular, a stochastic process whose underlying joint distribution is invariant is called a stationary process.

Note that, similarly to invariant sets, if a measure is invariant, it does not in general mean that each point in the support of the measure is an invariant point. The points may move, but their distribution overall is kept constant. For example, the Lebesgue measure on the unit circle (given by the length) is invariant under rotations, but no point of the circle is invariant.

An interpretation in terms of equilibrium is that for each measurable set AA, some mass may move away from AA, but an equal amount of mass moves into AA, so that the measure of AA overall stays the same.

Examples

Actions via Markov kernels

A monoid (M,e,)(M,e,\cdot) can also act on a measurable space XX via Markov kernels. That is, to each mMm\in M we can assign a kernel k m:XXk_m:X\to X such that

k e(A|x)=1 A(x)={1 xA; 0 xA, k_e(A|x) \;=\; 1_A(x) \;=\; \begin{cases} 1 & x\in A ; \\ 0 & x\notin A , \end{cases}

and

k mn(A|x)= Xk m(A|x)k n(dx|x). k_{m\cdot n}(A|x) \;=\; \int_X k_m(A|x')\,k_n(d x'|x) .

In this case, a measure pp on XX is invariant or stationary if and only if for all mMm\in M, and for all measurable AXA\subseteq X,

Xk m(A|x)p(dx)=p(A), \int_X k_m(A|x) \, p(d x) \;=\; p(A) ,

that is, each kernel k mk_m preserves the measure pp.

A probability space together with a measure-preserving kernel is sometimes called a stationary Markov chain.

Category-theoretic description

A group or monoid MM can be seen (via delooping) as a one-object category BMB M, and an action of MM on a measurable space XX can be seen as a functor BMMeasB M\to Meas (the category of measurable spaces?) or BMStochB M\to Stoch (the category of Markov kernels). (Since every measurable function canonically defines a Markov kernel, without loss of generality we can take the category of kernels in both cases.) As a diagram, it has a single object, and a loop for each element of MM:

An invariant probability measure is now a cone over this diagram. Specifically, since a probability measure is equivalently a Markov kernel from the one-point space, it makes the following diagram of Stoch commute for every mMm\in M:

In many situations, ergodic measures even form a limit cone.

Equivalently, a stationary measure pp gives an action of MM in the category of probability spaces and measure-preserving kernels (see for example at category of couplings).

Further properties

See also

References

  • Tobias Fritz, Tomáš Gonda, Paolo Perrone, De Finetti’s theorem in categorical probability. Journal of Stochastic Analysis, 2021. (arXiv:2105.02639)

  • Sean Moss, Paolo Perrone, A category-theoretic proof of the ergodic decomposition theorem, Ergodic Theory and Dynamical Systems, 2023. (arXiv:2207.07353)

  • Noé Ensarguet, Paolo Perrone, Categorical probability spaces, ergodic decompositions, and transitions to equilibrium, arXiv:2310.04267

  • Rob Cornish, Stochastic Neural Network Symmetrization in Markov Categories, 2024. (arXiv)

category: probability

Last revised on August 23, 2024 at 19:38:02. See the history of this page for a list of all contributions to it.