• If (\Omega, \mathcal{F}, P) is a
probability space, (E, \mathcal{E}) is a
measurable space, and X : \Omega \to E is a (E, \mathcal{E}) -valued random variable, then the
probability distribution of X is the pushforward measure of P by X onto (E, \mathcal{E}) . • A natural "
Lebesgue measure" on the
unit circle S1 (here thought of as a subset of the
complex plane C) may be defined using a push-forward construction and Lebesgue measure
λ on the
real line R. Let
λ also denote the restriction of Lebesgue measure to the interval [0, 2
π) and let
f : [0, 2
π) →
S1 be the natural bijection defined by
f(
t) = exp(
i t). The natural "Lebesgue measure" on
S1 is then the push-forward measure
f∗(
λ). The measure
f∗(
λ) might also be called "
arc length measure" or "angle measure", since the
f∗(
λ)-measure of an arc in
S1 is precisely its arc length (or, equivalently, the angle that it subtends at the centre of the circle.) • The previous example extends nicely to give a natural "Lebesgue measure" on the
n-dimensional
torus Tn. The previous example is a special case, since
S1 =
T1. This Lebesgue measure on
Tn is, up to normalization, the
Haar measure for the
compact,
connected Lie group Tn. •
Gaussian measures on infinite-dimensional vector spaces are defined using the push-forward and the standard Gaussian measure on the real line: a
Borel measure γ on a
separable Banach space X is called
Gaussian if the push-forward of
γ by any non-zero
linear functional in the
continuous dual space to
X is a Gaussian measure on
R. • Consider a measurable function
f :
X →
X and the
composition of
f with itself
n times: ::f^{(n)} = \underbrace{f \circ f \circ \dots \circ f}_{n \mathrm{\, times}} : X \to X. : This
iterated function forms a
dynamical system. It is often of interest in the study of such systems to find a measure
μ on
X that the map
f leaves unchanged, a so-called
invariant measure, i.e one for which
f∗(
μ) =
μ. • One can also consider
quasi-invariant measures for such a dynamical system: a measure
\mu on
(X,\Sigma) is called
quasi-invariant under f if the push-forward of
\mu by f is merely
equivalent to the original measure
μ, not necessarily equal to it. A pair of measures \mu, \nu on the same space are equivalent if and only if \forall A\in \Sigma: \ \mu(A) = 0 \iff \nu(A) = 0, so \mu is quasi-invariant under f if \forall A \in \Sigma: \ \mu(A) = 0 \iff f_* \mu(A) = \mu\big(f^{-1}(A)\big) = 0 • Many natural probability distributions, such as the
chi distribution, can be obtained via this construction. • Random variables induce pushforward measures. They map a probability space into a codomain space and endow that space with a probability measure defined by the pushforward. Furthermore, because random variables are functions (and hence total functions), the inverse image of the whole codomain is the whole domain, and the measure of the whole domain is 1, so the measure of the whole codomain is 1. This means that random variables can be composed
ad infinitum and they will always remain random variables and endow the codomain spaces with probability measures. ==A generalization==