Lebesgue–Rokhlin Probability Space
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In
probability theory Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set o ...
, a standard probability space, also called Lebesgue–Rokhlin probability space or just Lebesgue space (the latter term is ambiguous) is a
probability space In probability theory, a probability space or a probability triple (\Omega, \mathcal, P) is a mathematical construct that provides a formal model of a random process or "experiment". For example, one can define a probability space which models t ...
satisfying certain assumptions introduced by Vladimir Rokhlin in 1940. Informally, it is a probability space consisting of an interval and/or a finite or countable number of
atom Every atom is composed of a nucleus and one or more electrons bound to the nucleus. The nucleus is made of one or more protons and a number of neutrons. Only the most common variety of hydrogen has no neutrons. Every solid, liquid, gas ...
s. The theory of standard probability spaces was started by von Neumann in 1932 and shaped by Vladimir Rokhlin in 1940. Rokhlin showed that the
unit interval In mathematics, the unit interval is the closed interval , that is, the set of all real numbers that are greater than or equal to 0 and less than or equal to 1. It is often denoted ' (capital letter ). In addition to its role in real analys ...
endowed with the
Lebesgue measure In measure theory, a branch of mathematics, the Lebesgue measure, named after French mathematician Henri Lebesgue, is the standard way of assigning a measure to subsets of ''n''-dimensional Euclidean space. For ''n'' = 1, 2, or 3, it coincides ...
has important advantages over general probability spaces, yet can be effectively substituted for many of these in probability theory. The dimension of the unit interval is not an obstacle, as was clear already to
Norbert Wiener Norbert Wiener (November 26, 1894 – March 18, 1964) was an American mathematician and philosopher. He was a professor of mathematics at the Massachusetts Institute of Technology (MIT). A child prodigy, Wiener later became an early researcher ...
. He constructed the
Wiener process In mathematics, the Wiener process is a real-valued continuous-time stochastic process named in honor of American mathematician Norbert Wiener for his investigations on the mathematical properties of the one-dimensional Brownian motion. It i ...
(also called
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
) in the form of a
measurable In mathematics, the concept of a measure is a generalization and formalization of geometrical measures (length, area, volume) and other common notions, such as mass and probability of events. These seemingly distinct concepts have many simila ...
map from the unit interval to the space of continuous functions.


Short history

The theory of standard probability spaces was started by von Neumann in 1932 and shaped by Vladimir Rokhlin in 1940. For modernized presentations see , , and . Nowadays standard probability spaces may be (and often are) treated in the framework of
descriptive set theory In mathematical logic, descriptive set theory (DST) is the study of certain classes of "well-behaved" subsets of the real line and other Polish spaces. As well as being one of the primary areas of research in set theory, it has applications to oth ...
, via
standard Borel space In mathematics, a standard Borel space is the Borel space associated to a Polish space. Discounting Borel spaces of discrete Polish spaces, there is, up to isomorphism of measurable spaces, only one standard Borel space. Formal definition A me ...
s, see for example . This approach is based on the isomorphism theorem for standard Borel spaces . An alternate approach of Rokhlin, based on measure theory, neglects
null set In mathematical analysis, a null set N \subset \mathbb is a measurable set that has measure zero. This can be characterized as a set that can be covered by a countable union of intervals of arbitrarily small total length. The notion of null s ...
s, in contrast to descriptive set theory. Standard probability spaces are used routinely in
ergodic theory Ergodic theory (Greek: ' "work", ' "way") is a branch of mathematics that studies statistical properties of deterministic dynamical systems; it is the study of ergodicity. In this context, statistical properties means properties which are expres ...
,"Ergodic theory on Lebesgue spaces" is the subtitle of the book .


Definition

One of several well-known equivalent definitions of the standardness is given below, after some preparations. All
probability space In probability theory, a probability space or a probability triple (\Omega, \mathcal, P) is a mathematical construct that provides a formal model of a random process or "experiment". For example, one can define a probability space which models t ...
s are assumed to be
complete Complete may refer to: Logic * Completeness (logic) * Completeness of a theory, the property of a theory that every formula in the theory's language or its negation is provable Mathematics * The completeness of the real numbers, which implies ...
.


Isomorphism

An
isomorphism In mathematics, an isomorphism is a structure-preserving mapping between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between them. The word i ...
between two probability spaces \textstyle (\Omega_1,\mathcal_1,P_1) , \textstyle (\Omega_2,\mathcal_2,P_2) is an
invertible In mathematics, the concept of an inverse element generalises the concepts of opposite () and reciprocal () of numbers. Given an operation denoted here , and an identity element denoted , if , one says that is a left inverse of , and that ...
map \textstyle f : \Omega_1 \to \Omega_2 such that \textstyle f and \textstyle f^ both are (measurable and) measure preserving maps. Two probability spaces are isomorphic if there exists an isomorphism between them.


Isomorphism modulo zero

Two probability spaces \textstyle (\Omega_1,\mathcal_1,P_1) , \textstyle (\Omega_2,\mathcal_2,P_2) are isomorphic \textstyle \operatorname \, 0 if there exist
null set In mathematical analysis, a null set N \subset \mathbb is a measurable set that has measure zero. This can be characterized as a set that can be covered by a countable union of intervals of arbitrarily small total length. The notion of null s ...
s \textstyle A_1 \subset \Omega_1 , \textstyle A_2 \subset \Omega_2 such that the probability spaces \textstyle \Omega_1 \setminus A_1 , \textstyle \Omega_2 \setminus A_2 are isomorphic (being endowed naturally with sigma-fields and probability measures).


Standard probability space

A probability space is standard, if it is isomorphic \textstyle \operatorname \, 0 to an interval with Lebesgue measure, a finite or countable set of atoms, or a combination (disjoint union) of both. See , , and . See also , and . In the measure is assumed finite, not necessarily probabilistic. In atoms are not allowed.


Examples of non-standard probability spaces


A naive white noise

The space of all functions \textstyle f : \mathbb \to \mathbb may be thought of as the product \textstyle \mathbb^\mathbb of a continuum of copies of the real line \textstyle \mathbb . One may endow \textstyle \mathbb with a probability measure, say, the
standard normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu i ...
\textstyle \gamma = N(0,1) , and treat the space of functions as the product \textstyle (\mathbb,\gamma)^\mathbb of a continuum of identical probability spaces \textstyle (\mathbb,\gamma) . The
product measure In mathematics, given two measurable spaces and measures on them, one can obtain a product measurable space and a product measure on that space. Conceptually, this is similar to defining the Cartesian product of sets and the product topology of ...
\textstyle \gamma^\mathbb is a probability measure on \textstyle \mathbb^\mathbb . Naively it might seem that \textstyle \gamma^\mathbb describes
white noise In signal processing, white noise is a random signal having equal intensity at different frequencies, giving it a constant power spectral density. The term is used, with this or similar meanings, in many scientific and technical disciplines, ...
. However, the integral of a white noise function from 0 to 1 should be a random variable distributed ''N''(0, 1). In contrast, the integral (from 0 to 1) of \textstyle f \in \textstyle (\mathbb,\gamma)^\mathbb is undefined. ''ƒ'' also fails to be
almost surely In probability theory, an event is said to happen almost surely (sometimes abbreviated as a.s.) if it happens with probability 1 (or Lebesgue measure 1). In other words, the set of possible exceptions may be non-empty, but it has probability 0 ...
measurable, and the probability of ''ƒ'' being measurable is undefined. Indeed, if ''X'' is a random variable distributed (say) uniformly on (0, 1) and independent of ''ƒ'', then ''ƒ''(''X'') is not a random variable at all (it lacks measurability).


A perforated interval

Let \textstyle Z \subset (0,1) be a set whose inner Lebesgue measure is equal to 0, but outer Lebesgue measure is equal to 1 (thus, \textstyle Z is
nonmeasurable In mathematics, a non-measurable set is a set which cannot be assigned a meaningful "volume". The mathematical existence of such sets is construed to provide information about the notions of length, area and volume in formal set theory. In Z ...
to extreme). There exists a probability measure \textstyle m on \textstyle Z such that \textstyle m(Z \cap A) = \operatorname (A) for every Lebesgue measurable \textstyle A \subset (0,1) . (Here \textstyle \operatorname is the Lebesgue measure.) Events and random variables on the probability space \textstyle (Z,m) (treated \textstyle \operatorname \, 0 ) are in a natural one-to-one correspondence with events and random variables on the probability space \textstyle ((0,1),\operatorname) . It might seem that the probability space \textstyle (Z,m) is as good as \textstyle ((0,1),\operatorname) . However, it is not. A random variable \textstyle X defined by \textstyle X(\omega)=\omega is distributed uniformly on \textstyle (0,1) . The conditional measure, given \textstyle X=x , is just a single atom (at \textstyle x), provided that \textstyle ((0,1),\operatorname) is the underlying probability space. However, if \textstyle (Z,m) is used instead, then the conditional measure does not exist when \textstyle x \notin Z . A perforated circle is constructed similarly. Its events and random variables are the same as on the usual circle. The group of rotations acts on them naturally. However, it fails to act on the perforated circle. See also .


A superfluous measurable set

Let \textstyle Z \subset (0,1) be as in the previous example. Sets of the form \textstyle ( A \cap Z ) \cup ( B \setminus Z ), where \textstyle A and \textstyle B are arbitrary Lebesgue measurable sets, are a σ-algebra \textstyle \mathcal; it contains the Lebesgue σ-algebra and \textstyle Z. The formula : \displaystyle m \big( ( A \cap Z ) \cup ( B \setminus Z ) \big) = p \, \operatorname (A) + (1-p) \operatorname (B) gives the general form of a probability measure \textstyle m on \textstyle \big( (0,1), \mathcal \big) that extends the Lebesgue measure; here \textstyle p \in ,1 is a parameter. To be specific, we choose \textstyle p = 0.5. It might seem that such an extension of the Lebesgue measure is at least harmless. However, it is the perforated interval in disguise. The map : f(x) = \begin 0.5 x &\text x \in Z, \\ 0.5 + 0.5 x &\text x \in (0,1) \setminus Z \end is an isomorphism between \textstyle \big( (0,1), \mathcal, m \big) and the perforated interval corresponding to the set : \displaystyle Z_1 = \ \cup \ \, , another set of inner Lebesgue measure 0 but outer Lebesgue measure 1. See also .


A criterion of standardness

Standardness of a given probability space \textstyle (\Omega,\mathcal,P) is equivalent to a certain property of a measurable map \textstyle f from \textstyle (\Omega,\mathcal,P) to a measurable space \textstyle (X,\Sigma). The answer (standard, or not) does not depend on the choice of \textstyle (X,\Sigma) and \textstyle f . This fact is quite useful; one may adapt the choice of \textstyle (X,\Sigma) and \textstyle f to the given \textstyle (\Omega,\mathcal,P). No need to examine all cases. It may be convenient to examine a random variable \textstyle f : \Omega \to \mathbb, a random vector \textstyle f : \Omega \to \mathbb^n, a random sequence \textstyle f : \Omega \to \mathbb^\infty, or a sequence of events \textstyle (A_1,A_2,\dots) treated as a sequence of two-valued random variables, \textstyle f : \Omega \to \^\infty. Two conditions will be imposed on \textstyle f (to be
injective In mathematics, an injective function (also known as injection, or one-to-one function) is a function that maps distinct elements of its domain to distinct elements; that is, implies . (Equivalently, implies in the equivalent contraposi ...
, and generating). Below it is assumed that such \textstyle f is given. The question of its existence will be addressed afterwards. The probability space \textstyle (\Omega,\mathcal,P) is assumed to be
complete Complete may refer to: Logic * Completeness (logic) * Completeness of a theory, the property of a theory that every formula in the theory's language or its negation is provable Mathematics * The completeness of the real numbers, which implies ...
(otherwise it cannot be standard).


A single random variable

A measurable function \textstyle f : \Omega \to \mathbb induces a
pushforward measure In measure theory, a pushforward measure (also known as push forward, push-forward or image measure) is obtained by transferring ("pushing forward") a measure from one measurable space to another using a measurable function. Definition Given mea ...
f_*P, – the probability measure \textstyle \mu on \textstyle \mathbb, defined by : \displaystyle \mu(B) = (f_*P)(B) = P \big( f^(B) \big)    for Borel sets \textstyle B \subset \mathbb. i.e. the
distribution Distribution may refer to: Mathematics *Distribution (mathematics), generalized functions used to formulate solutions of partial differential equations *Probability distribution, the probability of a particular value or value range of a varia ...
of the random variable f. The image \textstyle f (\Omega) is always a set of full outer measure, : \displaystyle \mu^* \big( f(\Omega) \big) = \inf_\mu(B) = \inf_P(f^(B)) = P(\Omega) = 1, but its inner measure can differ (see ''a perforated interval''). In other words, \textstyle f (\Omega) need not be a set of full measure \textstyle \mu. A measurable function \textstyle f : \Omega \to \mathbb is called ''generating'' if \textstyle \mathcal is the completion with respect to P of the σ-algebra of inverse images \textstyle f^(B), where \textstyle B \subset \mathbb runs over all Borel sets. ''Caution.''   The following condition is not sufficient for \textstyle f to be generating: for every \textstyle A \in \mathcal there exists a Borel set \textstyle B \subset \mathbb such that \textstyle P ( A \mathbin f^(B) ) = 0. (\textstyle \Delta means
symmetric difference In mathematics, the symmetric difference of two sets, also known as the disjunctive union, is the set of elements which are in either of the sets, but not in their intersection. For example, the symmetric difference of the sets \ and \ is \. T ...
). Theorem. Let a measurable function \textstyle f : \Omega \to \mathbb be injective and generating, then the following two conditions are equivalent: * \mu(\textstyle f (\Omega)) = 1 (i.e. the inner measure has also full measure, and the image \textstyle f (\Omega) is measureable with respect to the completion); * (\Omega,\mathcal,P) \, is a standard probability space. See also .


A random vector

The same theorem holds for any \mathbb^n \, (in place of \mathbb \,). A measurable function f : \Omega \to \mathbb^n \, may be thought of as a finite sequence of random variables X_1,\dots,X_n : \Omega \to \mathbb, \, and f \, is generating if and only if \mathcal \, is the completion of the σ-algebra generated by X_1,\dots,X_n. \,


A random sequence

The theorem still holds for the space \mathbb^\infty \, of infinite sequences. A measurable function f : \Omega \to \mathbb^\infty \, may be thought of as an infinite sequence of random variables X_1,X_2,\dots : \Omega \to \mathbb, \, and f \, is generating if and only if \mathcal \, is the completion of the σ-algebra generated by X_1,X_2,\dots. \,


A sequence of events

In particular, if the random variables X_n \, take on only two values 0 and 1, we deal with a measurable function f : \Omega \to \^\infty \, and a sequence of sets A_1,A_2,\ldots \in \mathcal. \, The function f \, is generating if and only if \mathcal \, is the completion of the σ-algebra generated by A_1,A_2,\dots. \, In the pioneering work sequences A_1,A_2,\ldots \, that correspond to injective, generating f \, are called ''bases'' of the probability space (\Omega,\mathcal,P) \, (see ). A basis is called complete mod 0, if f(\Omega) \, is of full measure \mu, \, see . In the same section Rokhlin proved that if a probability space is complete mod 0 with respect to some basis, then it is complete mod 0 with respect to every other basis, and defines ''Lebesgue spaces'' by this completeness property. See also and .


Additional remarks

The four cases treated above are mutually equivalent, and can be united, since the measurable spaces \mathbb, \, \mathbb^n, \, \mathbb^\infty \, and \^\infty \, are mutually isomorphic; they all are standard measurable spaces (in other words, standard Borel spaces). Existence of an injective measurable function from \textstyle (\Omega,\mathcal,P) to a standard measurable space \textstyle (X,\Sigma) does not depend on the choice of \textstyle (X,\Sigma). Taking \textstyle (X,\Sigma) = \^\infty we get the property well known as being ''countably separated'' (but called ''separable'' in ). Existence of a generating measurable function from \textstyle (\Omega,\mathcal,P) to a standard measurable space \textstyle (X,\Sigma) also does not depend on the choice of \textstyle (X,\Sigma). Taking \textstyle (X,\Sigma) = \^\infty we get the property well known as being ''countably generated'' (mod 0), see . Every injective measurable function from a ''standard'' probability space to a ''standard'' measurable space is generating. See , , . This property does not hold for the non-standard probability space dealt with in the subsection "A superfluous measurable set" above. ''Caution.''   The property of being countably generated is invariant under mod 0 isomorphisms, but the property of being countably separated is not. In fact, a standard probability space \textstyle (\Omega,\mathcal,P) is countably separated if and only if the
cardinality In mathematics, the cardinality of a set is a measure of the number of elements of the set. For example, the set A = \ contains 3 elements, and therefore A has a cardinality of 3. Beginning in the late 19th century, this concept was generalized ...
of \textstyle \Omega does not exceed continuum (see ). A standard probability space may contain a null set of any cardinality, thus, it need not be countably separated. However, it always contains a countably separated subset of full measure.


Equivalent definitions

Let \textstyle (\Omega,\mathcal,P) be a complete probability space such that the cardinality of \textstyle \Omega does not exceed continuum (the general case is reduced to this special case, see the caution above).


Via absolute measurability

Definition.   \textstyle (\Omega,\mathcal,P) is standard if it is countably separated, countably generated, and absolutely measurable. See and . "Absolutely measurable" means: measurable in every countably separated, countably generated probability space containing it.


Via perfectness

Definition.   \textstyle (\Omega,\mathcal,P) is standard if it is countably separated and perfect. See . "Perfect" means that for every measurable function from \textstyle (\Omega,\mathcal,P) to \mathbb \, the image measure is
regular The term regular can mean normal or in accordance with rules. It may refer to: People * Moses Regular (born 1971), America football player Arts, entertainment, and media Music * "Regular" (Badfinger song) * Regular tunings of stringed instrum ...
. (Here the image measure is defined on all sets whose inverse images belong to \textstyle \mathcal , irrespective of the Borel structure of \mathbb \,).


Via topology

Definition.   \textstyle (\Omega,\mathcal,P) is standard if there exists a
topology In mathematics, topology (from the Greek words , and ) is concerned with the properties of a geometric object that are preserved under continuous deformations, such as stretching, twisting, crumpling, and bending; that is, without closing ho ...
\textstyle \tau on \textstyle \Omega such that * the topological space \textstyle (\Omega,\tau) is
metrizable In topology and related areas of mathematics, a metrizable space is a topological space that is homeomorphic to a metric space. That is, a topological space (X, \mathcal) is said to be metrizable if there is a metric d : X \times X \to , \inf ...
; * \textstyle \mathcal is the completion of the σ-algebra generated by \textstyle \tau (that is, by all open sets); * for every \textstyle \varepsilon > 0 there exists a compact set \textstyle K in \textstyle (\Omega,\tau) such that \textstyle P(K) \ge 1-\varepsilon. See .


Verifying the standardness

Every probability distribution on the space \textstyle \mathbb^n turns it into a standard probability space. (Here, a probability distribution means a probability measure defined initially on the Borel sigma-algebra and completed.) The same holds on every
Polish space In the mathematical discipline of general topology, a Polish space is a separable completely metrizable topological space; that is, a space homeomorphic to a complete metric space that has a countable dense subset. Polish spaces are so named ...
, see , , , and . For example, the Wiener measure turns the Polish space \textstyle C[0,\infty) (of all continuous functions \textstyle [0,\infty) \to \mathbb, endowed with the
topology In mathematics, topology (from the Greek words , and ) is concerned with the properties of a geometric object that are preserved under continuous deformations, such as stretching, twisting, crumpling, and bending; that is, without closing ho ...
of local uniform convergence) into a standard probability space. Another example: for every sequence of random variables, their joint distribution turns the Polish space \textstyle \mathbb^\infty (of sequences; endowed with the
product topology In topology and related areas of mathematics, a product space is the Cartesian product of a family of topological spaces equipped with a natural topology called the product topology. This topology differs from another, perhaps more natural-seem ...
) into a standard probability space. (Thus, the idea of
dimension In physics and mathematics, the dimension of a mathematical space (or object) is informally defined as the minimum number of coordinates needed to specify any point within it. Thus, a line has a dimension of one (1D) because only one coor ...
, very natural for
topological space In mathematics, a topological space is, roughly speaking, a geometrical space in which closeness is defined but cannot necessarily be measured by a numeric distance. More specifically, a topological space is a set whose elements are called po ...
s, is utterly inappropriate for standard probability spaces.) The product of two standard probability spaces is a standard probability space. The same holds for the product of countably many spaces, see , , and . A measurable subset of a standard probability space is a standard probability space. It is assumed that the set is not a null set, and is endowed with the conditional measure. See and . Every
probability measure In mathematics, a probability measure is a real-valued function defined on a set of events in a probability space that satisfies measure properties such as ''countable additivity''. The difference between a probability measure and the more g ...
on a
standard Borel space In mathematics, a standard Borel space is the Borel space associated to a Polish space. Discounting Borel spaces of discrete Polish spaces, there is, up to isomorphism of measurable spaces, only one standard Borel space. Formal definition A me ...
turns it into a standard probability space.


Using the standardness


Regular conditional probabilities

In the discrete setup, the conditional probability is another probability measure, and the conditional expectation may be treated as the (usual) expectation with respect to the conditional measure, see
conditional expectation In probability theory, the conditional expectation, conditional expected value, or conditional mean of a random variable is its expected value – the value it would take “on average” over an arbitrarily large number of occurrences – given ...
. In the non-discrete setup, conditioning is often treated indirectly, since the condition may have probability 0, see
conditional expectation In probability theory, the conditional expectation, conditional expected value, or conditional mean of a random variable is its expected value – the value it would take “on average” over an arbitrarily large number of occurrences – given ...
. As a result, a number of well-known facts have special 'conditional' counterparts. For example: linearity of the expectation; Jensen's inequality (see
conditional expectation In probability theory, the conditional expectation, conditional expected value, or conditional mean of a random variable is its expected value – the value it would take “on average” over an arbitrarily large number of occurrences – given ...
);
Hölder's inequality In mathematical analysis, Hölder's inequality, named after Otto Hölder, is a fundamental inequality between integrals and an indispensable tool for the study of spaces. :Theorem (Hölder's inequality). Let be a measure space and let with . ...
; the
monotone convergence theorem In the mathematical field of real analysis, the monotone convergence theorem is any of a number of related theorems proving the convergence of monotonic sequences (sequences that are non-decreasing or non-increasing) that are also bounded. Info ...
, etc. Given a random variable \textstyle Y on a probability space \textstyle (\Omega,\mathcal,P) , it is natural to try constructing a conditional measure \textstyle P_y , that is, the
conditional distribution In probability theory and statistics, given two jointly distributed random variables X and Y, the conditional probability distribution of Y given X is the probability distribution of Y when X is known to be a particular value; in some cases the c ...
of \textstyle \omega \in \Omega given \textstyle Y(\omega)=y . In general this is impossible (see ). However, for a ''standard'' probability space \textstyle (\Omega,\mathcal,P) this is possible, and well known as ''canonical system of measures'' (see ), which is basically the same as ''conditional probability measures'' (see ), ''disintegration of measure'' (see ), and ''regular conditional probabilities'' (see ). The conditional Jensen's inequality is just the (usual) Jensen's inequality applied to the conditional measure. The same holds for many other facts.


Measure preserving transformations

Given two probability spaces \textstyle (\Omega_1,\mathcal_1,P_1) , \textstyle (\Omega_2,\mathcal_2,P_2) and a measure preserving map \textstyle f : \Omega_1 \to \Omega_2 , the image \textstyle f(\Omega_1) need not cover the whole \textstyle \Omega_2 , it may miss a null set. It may seem that \textstyle P_2(f(\Omega_1)) has to be equal to 1, but it is not so. The outer measure of \textstyle f(\Omega_1) is equal to 1, but the inner measure may differ. However, if the probability spaces \textstyle (\Omega_1,\mathcal_1,P_1) , \textstyle (\Omega_2,\mathcal_2,P_2) are ''standard '' then \textstyle P_2(f(\Omega_1))=1 , see . If \textstyle f is also one-to-one then every \textstyle A \in \mathcal_1 satisfies \textstyle f(A) \in \mathcal_2 , \textstyle P_2(f(A))=P_1(A) . Therefore, \textstyle f^ is measurable (and measure preserving). See and . See also . "There is a coherent way to ignore the sets of measure 0 in a measure space" . Striving to get rid of null sets, mathematicians often use equivalence classes of measurable sets or functions. Equivalence classes of measurable subsets of a probability space form a normed
complete Boolean algebra In mathematics, a complete Boolean algebra is a Boolean algebra in which every subset has a supremum (least upper bound). Complete Boolean algebras are used to construct Boolean-valued models of set theory in the theory of forcing. Every Boole ...
called the ''measure algebra'' (or metric structure). Every measure preserving map \textstyle f : \Omega_1 \to \Omega_2 leads to a homomorphism \textstyle F of measure algebras; basically, \textstyle F(B) = f^(B) for \textstyle B\in\mathcal_2 . It may seem that every homomorphism of measure algebras has to correspond to some measure preserving map, but it is not so. However, for ''standard'' probability spaces each \textstyle F corresponds to some \textstyle f . See , , .


See also


Notes


References

*. Translated from Russian: . *. *. *. *. *. *. *. *. *. *. *{{citation, last=Wiener, first=N., author-link=Norbert Wiener, title=Nonlinear problems in random theory, year=1958, publisher=M.I.T. Press. Experiment (probability theory) Measure theory