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Radon–Nikodym theorem

In mathematics, the Radon–Nikodym theorem is a result in measure theory that expresses the relationship between two measures defined on the same measurable space. A measure is a set function that assigns a consistent magnitude to the measurable subsets of a measurable space. Examples of a measure include area and volume, where the subsets are sets of points; or the probability of an event, which is a subset of possible outcomes within a wider probability space.

One way to derive a new measure from one already given is to assign a density to each point of the space, then integrate over the measurable subset of interest. This can be expressed as

where ν is the new measure being defined for any measurable subset A and the function f is the density at a given point. The integral is with respect to an existing measure μ, which may often be the canonical Lebesgue measure on the real line R or the n-dimensional Euclidean space Rn (corresponding to our standard notions of length, area and volume). For example, if f represented mass density and μ was the Lebesgue measure in three-dimensional space R3, then ν(A) would equal the total mass in a spatial region A.

The Radon–Nikodym theorem essentially states that, under certain conditions, any measure ν can be expressed in this way with respect to another measure μ on the same space. The function f is then called the Radon–Nikodym derivative and is denoted by .[1] An important application is in probability theory, leading to the probability density function of a random variable.

The theorem is named after Johann Radon, who proved the theorem for the special case where the underlying space is Rn in 1913, and for Otto Nikodym who proved the general case in 1930.[2] In 1936 Hans Freudenthal generalized the Radon–Nikodym theorem by proving the Freudenthal spectral theorem, a result in Riesz space theory; this contains the Radon–Nikodym theorem as a special case.[3]

A Banach space Y is said to have the Radon–Nikodym property if the generalization of the Radon–Nikodym theorem also holds, mutatis mutandis, for functions with values in Y. All Hilbert spaces have the Radon–Nikodym property.

Formal description Edit

Radon–Nikodym theorem Edit

The Radon–Nikodym theorem involves a measurable space   on which two σ-finite measures are defined,   and   It states that, if   (that is, if   is absolutely continuous with respect to  ), then there exists a  -measurable function   such that for any measurable set  

 

Radon–Nikodym derivative Edit

The function   satisfying the above equality is uniquely defined up to a  -null set, that is, if   is another function which satisfies the same property, then    -almost everywhere. The function   is commonly written   and is called the Radon–Nikodym derivative. The choice of notation and the name of the function reflects the fact that the function is analogous to a derivative in calculus in the sense that it describes the rate of change of density of one measure with respect to another (the way the Jacobian determinant is used in multivariable integration).

Extension to signed or complex measures Edit

A similar theorem can be proven for signed and complex measures: namely, that if   is a nonnegative σ-finite measure, and   is a finite-valued signed or complex measure such that   that is,   is absolutely continuous with respect to   then there is a  -integrable real- or complex-valued function   on   such that for every measurable set  

 

Examples Edit

In the following examples, the set X is the real interval [0,1], and   is the Borel sigma-algebra on X.

  1.   is the length measure on X.   assigns to each subset Y of X, twice the length of Y. Then,  .
  2.   is the length measure on X.   assigns to each subset Y of X, the number of points from the set {0.1, …, 0.9} that are contained in Y. Then,   is not absolutely-continuous with respect to   since it assigns non-zero measure to zero-length points. Indeed, there is no derivative  : there is no finite function that, when integrated e.g. from   to  , gives   for all  .
  3.  , where   is the length measure on X and   is the Dirac measure on 0 (it assigns a measure of 1 to any set containing 0 and a measure of 0 to any other set). Then,   is absolutely continuous with respect to  , and   – the derivative is 0 at   and 1 at  .[4]

Properties Edit

  • Let ν, μ, and λ be σ-finite measures on the same measurable space. If νλ and μλ (ν and μ are both absolutely continuous with respect to λ), then
     
  • If νμλ, then
     
  • In particular, if μν and νμ, then
     
  • If μλ and g is a μ-integrable function, then
     
  • If ν is a finite signed or complex measure, then
     

Applications Edit

Probability theory Edit

The theorem is very important in extending the ideas of probability theory from probability masses and probability densities defined over real numbers to probability measures defined over arbitrary sets. It tells if and how it is possible to change from one probability measure to another. Specifically, the probability density function of a random variable is the Radon–Nikodym derivative of the induced measure with respect to some base measure (usually the Lebesgue measure for continuous random variables).

For example, it can be used to prove the existence of conditional expectation for probability measures. The latter itself is a key concept in probability theory, as conditional probability is just a special case of it.

Financial mathematics Edit

Amongst other fields, financial mathematics uses the theorem extensively, in particular via the Girsanov theorem. Such changes of probability measure are the cornerstone of the rational pricing of derivatives and are used for converting actual probabilities into those of the risk neutral probabilities.

Information divergences Edit

If μ and ν are measures over X, and μν

  • The Kullback–Leibler divergence from ν to μ is defined to be
     
  • For α > 0, α ≠ 1 the Rényi divergence of order α from ν to μ is defined to be
     

The assumption of σ-finiteness Edit

The Radon–Nikodym theorem above makes the assumption that the measure μ with respect to which one computes the rate of change of ν is σ-finite.

Negative example Edit

Here is an example when μ is not σ-finite and the Radon–Nikodym theorem fails to hold.

Consider the Borel σ-algebra on the real line. Let the counting measure, μ, of a Borel set A be defined as the number of elements of A if A is finite, and otherwise. One can check that μ is indeed a measure. It is not σ-finite, as not every Borel set is at most a countable union of finite sets. Let ν be the usual Lebesgue measure on this Borel algebra. Then, ν is absolutely continuous with respect to μ, since for a set A one has μ(A) = 0 only if A is the empty set, and then ν(A) is also zero.

Assume that the Radon–Nikodym theorem holds, that is, for some measurable function f one has

 

for all Borel sets. Taking A to be a singleton set, A = {a}, and using the above equality, one finds

 

for all real numbers a. This implies that the function f, and therefore the Lebesgue measure ν, is zero, which is a contradiction.

Positive result Edit

Assuming   the Radon–Nikodym theorem also holds if   is localizable and   is accessible with respect to  ,[5]: p. 189, Exercise 9O  i.e.,   for all  [6]: Theorem 1.111 (Radon–Nikodym, II) [5]: p. 190, Exercise 9T(ii) 

Proof Edit

This section gives a measure-theoretic proof of the theorem. There is also a functional-analytic proof, using Hilbert space methods, that was first given by von Neumann.

For finite measures μ and ν, the idea is to consider functions f with f dμ. The supremum of all such functions, along with the monotone convergence theorem, then furnishes the Radon–Nikodym derivative. The fact that the remaining part of μ is singular with respect to ν follows from a technical fact about finite measures. Once the result is established for finite measures, extending to σ-finite, signed, and complex measures can be done naturally. The details are given below.

For finite measures Edit

Constructing an extended-valued candidate First, suppose μ and ν are both finite-valued nonnegative measures. Let F be the set of those extended-value measurable functions f  : X → [0, ∞] such that:

 

F ≠ ∅, since it contains at least the zero function. Now let f1,  f2F, and suppose A is an arbitrary measurable set, and define:

 

Then one has

 

and therefore, max{ f1,  f2} ∈ F.

Now, let { fn } be a sequence of functions in F such that

 

By replacing fn with the maximum of the first n functions, one can assume that the sequence { fn } is increasing. Let g be an extended-valued function defined as

 

By Lebesgue's monotone convergence theorem, one has

 

for each A ∈ Σ, and hence, gF. Also, by the construction of g,

 

Proving equality Now, since gF,

 

defines a nonnegative measure on Σ. To prove equality, we show that ν0 = 0.

Suppose ν0 ≠ 0; then, since μ is finite, there is an ε > 0 such that ν0(X) > ε μ(X). To derive a contradiction from ν0 ≠ 0, we look for a positive set P ∈ Σ for the signed measure ν0ε μ (i.e. a measurable set P, all of whose measurable subsets have non-negative ν0 − εμ measure), where also P has positive μ-measure. Conceptually, we're looking for a set P, where ν0ε μ in every part of P. A convenient approach is to use the Hahn decomposition (P, N) for the signed measure ν0ε μ.

Note then that for every A ∈ Σ one has ν0(AP) ≥ ε μ(AP), and hence,

 

where 1P is the indicator function of P. Also, note that μ(P) > 0 as desired; for if μ(P) = 0, then (since ν is absolutely continuous in relation to μ) ν0(P) ≤ ν(P) = 0, so ν0(P) = 0 and

 

contradicting the fact that ν0(X) > εμ(X).

Then, since also

 

g + ε 1PF and satisfies

 

This is impossible because it violates the definition of a supremum; therefore, the initial assumption that ν0 ≠ 0 must be false. Hence, ν0 = 0, as desired.

Restricting to finite values Now, since g is μ-integrable, the set {xX : g(x) = ∞} is μ-null. Therefore, if a f is defined as

 

then f has the desired properties.

Uniqueness As for the uniqueness, let f, g : X → [0, ∞) be measurable functions satisfying

 

for every measurable set A. Then, gf is μ-integrable, and

 

In particular, for A = {xX : f(x) > g(x)}, or {xX : f(x) < g(x)}. It follows that

 

and so, that (gf )+ = 0 μ-almost everywhere; the same is true for (gf ), and thus, f = g μ-almost everywhere, as desired.

For σ-finite positive measures Edit

If μ and ν are σ-finite, then X can be written as the union of a sequence {Bn}n of disjoint sets in Σ, each of which has finite measure under both μ and ν. For each n, by the finite case, there is a Σ-measurable function fn  : Bn → [0, ∞) such that

 

for each Σ-measurable subset A of Bn. The sum   of those functions is then the required function such that  .

As for the uniqueness, since each of the fn is μ-almost everywhere unique, so is f.

For signed and complex measures Edit

If ν is a σ-finite signed measure, then it can be Hahn–Jordan decomposed as ν = ν+ν where one of the measures is finite. Applying the previous result to those two measures, one obtains two functions, g, h : X → [0, ∞), satisfying the Radon–Nikodym theorem for ν+ and ν respectively, at least one of which is μ-integrable (i.e., its integral with respect to μ is finite). It is clear then that f = gh satisfies the required properties, including uniqueness, since both g and h are unique up to μ-almost everywhere equality.

If ν is a complex measure, it can be decomposed as ν = ν1 + 2, where both ν1 and ν2 are finite-valued signed measures. Applying the above argument, one obtains two functions, g, h : X → [0, ∞), satisfying the required properties for ν1 and ν2, respectively. Clearly, f = g + ih is the required function.

The Lebesgue decomposition theorem Edit

Lebesgue's decomposition theorem shows that the assumptions of the Radon–Nikodym theorem can be found even in a situation which is seemingly more general. Consider a σ-finite positive measure   on the measure space   and a σ-finite signed measure   on  , without assuming any absolute continuity. Then there exist unique signed measures   and   on   such that  ,  , and  . The Radon–Nikodym theorem can then be applied to the pair  .

See also Edit

Notes Edit

  1. ^ Billingsley, Patrick (1995). Probability and Measure (Third ed.). New York: John Wiley & Sons. pp. 419–427. ISBN 0-471-00710-2.
  2. ^ Nikodym, O. (1930). "Sur une généralisation des intégrales de M. J. Radon" (PDF). Fundamenta Mathematicae (in French). 15: 131–179. doi:10.4064/fm-15-1-131-179. JFM 56.0922.02. Retrieved 2018-01-30.
  3. ^ Zaanen, Adriaan C. (1996). Introduction to Operator Theory in Riesz Spaces. Springer. ISBN 3-540-61989-5.
  4. ^ "Calculating Radon Nikodym derivative". Stack Exchange. April 7, 2018.
  5. ^ a b Brown, Arlen; Pearcy, Carl (1977). Introduction to Operator Theory I: Elements of Functional Analysis. ISBN 978-1461299288.
  6. ^ Fonseca, Irene; Leoni, Giovanni. Modern Methods in the Calculus of Variations: Lp Spaces. Springer. p. 68. ISBN 978-0-387-35784-3.

References Edit

  • Lang, Serge (1969). Analysis II: Real analysis. Addison-Wesley. Contains a proof for vector measures assuming values in a Banach space.
  • Royden, H. L.; Fitzpatrick, P. M. (2010). Real Analysis (4th ed.). Pearson. Contains a lucid proof in case the measure ν is not σ-finite.
  • Shilov, G. E.; Gurevich, B. L. (1978). Integral, Measure, and Derivative: A Unified Approach. Richard A. Silverman, trans. Dover Publications. ISBN 0-486-63519-8.
  • Stein, Elias M.; Shakarchi, Rami (2005). Real analysis: measure theory, integration, and Hilbert spaces. Princeton lectures in analysis. Princeton, N.J: Princeton University Press. ISBN 978-0-691-11386-9. Contains a proof of the generalisation.
  • Teschl, Gerald. "Topics in Real and Functional Analysis". (lecture notes).

This article incorporates material from Radon–Nikodym theorem on PlanetMath, which is licensed under the Creative Commons Attribution/Share-Alike License.

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In mathematics the Radon Nikodym theorem is a result in measure theory that expresses the relationship between two measures defined on the same measurable space A measure is a set function that assigns a consistent magnitude to the measurable subsets of a measurable space Examples of a measure include area and volume where the subsets are sets of points or the probability of an event which is a subset of possible outcomes within a wider probability space One way to derive a new measure from one already given is to assign a density to each point of the space then integrate over the measurable subset of interest This can be expressed as n A A f d m displaystyle nu A int A f d mu where n is the new measure being defined for any measurable subset A and the function f is the density at a given point The integral is with respect to an existing measure m which may often be the canonical Lebesgue measure on the real line R or the n dimensional Euclidean space Rn corresponding to our standard notions of length area and volume For example if f represented mass density and m was the Lebesgue measure in three dimensional space R3 then n A would equal the total mass in a spatial region A The Radon Nikodym theorem essentially states that under certain conditions any measure n can be expressed in this way with respect to another measure m on the same space The function f is then called the Radon Nikodym derivative and is denoted by d n d m displaystyle tfrac d nu d mu 1 An important application is in probability theory leading to the probability density function of a random variable The theorem is named after Johann Radon who proved the theorem for the special case where the underlying space is Rn in 1913 and for Otto Nikodym who proved the general case in 1930 2 In 1936 Hans Freudenthal generalized the Radon Nikodym theorem by proving the Freudenthal spectral theorem a result in Riesz space theory this contains the Radon Nikodym theorem as a special case 3 A Banach space Y is said to have the Radon Nikodym property if the generalization of the Radon Nikodym theorem also holds mutatis mutandis for functions with values in Y All Hilbert spaces have the Radon Nikodym property Contents 1 Formal description 1 1 Radon Nikodym theorem 1 2 Radon Nikodym derivative 1 3 Extension to signed or complex measures 2 Examples 3 Properties 4 Applications 4 1 Probability theory 4 2 Financial mathematics 4 3 Information divergences 5 The assumption of s finiteness 5 1 Negative example 5 2 Positive result 6 Proof 6 1 For finite measures 6 2 For s finite positive measures 6 3 For signed and complex measures 7 The Lebesgue decomposition theorem 8 See also 9 Notes 10 ReferencesFormal description EditRadon Nikodym theorem Edit The Radon Nikodym theorem involves a measurable space X S displaystyle X Sigma nbsp on which two s finite measures are defined m displaystyle mu nbsp and n displaystyle nu nbsp It states that if n m displaystyle nu ll mu nbsp that is if n displaystyle nu nbsp is absolutely continuous with respect to m displaystyle mu nbsp then there exists a S displaystyle Sigma nbsp measurable function f X 0 displaystyle f X to 0 infty nbsp such that for any measurable set A X displaystyle A subseteq X nbsp n A A f d m displaystyle nu A int A f d mu nbsp Radon Nikodym derivative Edit The function f displaystyle f nbsp satisfying the above equality is uniquely defined up to a m displaystyle mu nbsp null set that is if g displaystyle g nbsp is another function which satisfies the same property then f g displaystyle f g nbsp m displaystyle mu nbsp almost everywhere The function f displaystyle f nbsp is commonly written d n d m frac d nu d mu nbsp and is called the Radon Nikodym derivative The choice of notation and the name of the function reflects the fact that the function is analogous to a derivative in calculus in the sense that it describes the rate of change of density of one measure with respect to another the way the Jacobian determinant is used in multivariable integration Extension to signed or complex measures Edit A similar theorem can be proven for signed and complex measures namely that if m displaystyle mu nbsp is a nonnegative s finite measure and n displaystyle nu nbsp is a finite valued signed or complex measure such that n m displaystyle nu ll mu nbsp that is n displaystyle nu nbsp is absolutely continuous with respect to m displaystyle mu nbsp then there is a m displaystyle mu nbsp integrable real or complex valued function g displaystyle g nbsp on X displaystyle X nbsp such that for every measurable set A displaystyle A nbsp n A A g d m displaystyle nu A int A g d mu nbsp Examples EditIn the following examples the set X is the real interval 0 1 and S displaystyle Sigma nbsp is the Borel sigma algebra on X m displaystyle mu nbsp is the length measure on X n displaystyle nu nbsp assigns to each subset Y of X twice the length of Y Then d n d m 2 textstyle frac d nu d mu 2 nbsp m displaystyle mu nbsp is the length measure on X n displaystyle nu nbsp assigns to each subset Y of X the number of points from the set 0 1 0 9 that are contained in Y Then n displaystyle nu nbsp is not absolutely continuous with respect to m displaystyle mu nbsp since it assigns non zero measure to zero length points Indeed there is no derivative d n d m textstyle frac d nu d mu nbsp there is no finite function that when integrated e g from 0 1 e displaystyle 0 1 varepsilon nbsp to 0 1 e displaystyle 0 1 varepsilon nbsp gives 1 displaystyle 1 nbsp for all e gt 0 displaystyle varepsilon gt 0 nbsp m n d 0 displaystyle mu nu delta 0 nbsp where n displaystyle nu nbsp is the length measure on X and d 0 displaystyle delta 0 nbsp is the Dirac measure on 0 it assigns a measure of 1 to any set containing 0 and a measure of 0 to any other set Then n displaystyle nu nbsp is absolutely continuous with respect to m displaystyle mu nbsp and d n d m 1 X 0 textstyle frac d nu d mu 1 X setminus 0 nbsp the derivative is 0 at x 0 displaystyle x 0 nbsp and 1 at x gt 0 displaystyle x gt 0 nbsp 4 Properties EditLet n m and l be s finite measures on the same measurable space If n l and m l n and m are both absolutely continuous with respect to l then d n m d l d n d l d m d l l almost everywhere displaystyle frac d nu mu d lambda frac d nu d lambda frac d mu d lambda quad lambda text almost everywhere nbsp If n m l then d n d l d n d m d m d l l almost everywhere displaystyle frac d nu d lambda frac d nu d mu frac d mu d lambda quad lambda text almost everywhere nbsp In particular if m n and n m then d m d n d n d m 1 n almost everywhere displaystyle frac d mu d nu left frac d nu d mu right 1 quad nu text almost everywhere nbsp If m l and g is a m integrable function then X g d m X g d m d l d l displaystyle int X g d mu int X g frac d mu d lambda d lambda nbsp If n is a finite signed or complex measure then d n d m d n d m displaystyle d nu over d mu left d nu over d mu right nbsp Applications EditProbability theory Edit The theorem is very important in extending the ideas of probability theory from probability masses and probability densities defined over real numbers to probability measures defined over arbitrary sets It tells if and how it is possible to change from one probability measure to another Specifically the probability density function of a random variable is the Radon Nikodym derivative of the induced measure with respect to some base measure usually the Lebesgue measure for continuous random variables For example it can be used to prove the existence of conditional expectation for probability measures The latter itself is a key concept in probability theory as conditional probability is just a special case of it Financial mathematics Edit Amongst other fields financial mathematics uses the theorem extensively in particular via the Girsanov theorem Such changes of probability measure are the cornerstone of the rational pricing of derivatives and are used for converting actual probabilities into those of the risk neutral probabilities Information divergences Edit If m and n are measures over X and m n The Kullback Leibler divergence from n to m is defined to be D KL m n X log d m d n d m displaystyle D text KL mu parallel nu int X log left frac d mu d nu right d mu nbsp For a gt 0 a 1 the Renyi divergence of order a from n to m is defined to be D a m n 1 a 1 log X d m d n a 1 d m displaystyle D alpha mu parallel nu frac 1 alpha 1 log left int X left frac d mu d nu right alpha 1 d mu right nbsp The assumption of s finiteness EditThe Radon Nikodym theorem above makes the assumption that the measure m with respect to which one computes the rate of change of n is s finite Negative example Edit Here is an example when m is not s finite and the Radon Nikodym theorem fails to hold Consider the Borel s algebra on the real line Let the counting measure m of a Borel set A be defined as the number of elements of A if A is finite and otherwise One can check that m is indeed a measure It is not s finite as not every Borel set is at most a countable union of finite sets Let n be the usual Lebesgue measure on this Borel algebra Then n is absolutely continuous with respect to m since for a set A one has m A 0 only if A is the empty set and then n A is also zero Assume that the Radon Nikodym theorem holds that is for some measurable function f one has n A A f d m displaystyle nu A int A f d mu nbsp for all Borel sets Taking A to be a singleton set A a and using the above equality one finds 0 f a displaystyle 0 f a nbsp for all real numbers a This implies that the function f and therefore the Lebesgue measure n is zero which is a contradiction Positive result Edit Assuming n m displaystyle nu ll mu nbsp the Radon Nikodym theorem also holds if m displaystyle mu nbsp is localizable and n displaystyle nu nbsp is accessible with respect to m displaystyle mu nbsp 5 p 189 Exercise 9O i e n A sup n B B P A m pre R 0 displaystyle nu A sup nu B B in cal P A cap mu operatorname pre mathbb R geq 0 nbsp for all A S displaystyle A in Sigma nbsp 6 Theorem 1 111 Radon Nikodym II 5 p 190 Exercise 9T ii Proof EditThis section gives a measure theoretic proof of the theorem There is also a functional analytic proof using Hilbert space methods that was first given by von Neumann For finite measures m and n the idea is to consider functions f with f dm dn The supremum of all such functions along with the monotone convergence theorem then furnishes the Radon Nikodym derivative The fact that the remaining part of m is singular with respect to n follows from a technical fact about finite measures Once the result is established for finite measures extending to s finite signed and complex measures can be done naturally The details are given below For finite measures Edit Constructing an extended valued candidate First suppose m and n are both finite valued nonnegative measures Let F be the set of those extended value measurable functions f X 0 such that A S A f d m n A displaystyle forall A in Sigma qquad int A f d mu leq nu A nbsp F since it contains at least the zero function Now let f1 f2 F and suppose A is an arbitrary measurable set and define A 1 x A f 1 x gt f 2 x A 2 x A f 2 x f 1 x displaystyle begin aligned A 1 amp left x in A f 1 x gt f 2 x right A 2 amp left x in A f 2 x geq f 1 x right end aligned nbsp Then one has A max f 1 f 2 d m A 1 f 1 d m A 2 f 2 d m n A 1 n A 2 n A displaystyle int A max left f 1 f 2 right d mu int A 1 f 1 d mu int A 2 f 2 d mu leq nu left A 1 right nu left A 2 right nu A nbsp and therefore max f 1 f 2 F Now let fn be a sequence of functions in F such that lim n X f n d m sup f F X f d m displaystyle lim n to infty int X f n d mu sup f in F int X f d mu nbsp By replacing fn with the maximum of the first n functions one can assume that the sequence fn is increasing Let g be an extended valued function defined as g x lim n f n x displaystyle g x lim n to infty f n x nbsp By Lebesgue s monotone convergence theorem one has lim n A f n d m A lim n f n x d m x A g d m n A displaystyle lim n to infty int A f n d mu int A lim n to infty f n x d mu x int A g d mu leq nu A nbsp for each A S and hence g F Also by the construction of g X g d m sup f F X f d m displaystyle int X g d mu sup f in F int X f d mu nbsp Proving equality Now since g F n 0 A n A A g d m displaystyle nu 0 A nu A int A g d mu nbsp defines a nonnegative measure on S To prove equality we show that n0 0 Suppose n0 0 then since m is finite there is an e gt 0 such that n0 X gt e m X To derive a contradiction from n0 0 we look for a positive set P S for the signed measure n0 e m i e a measurable set P all of whose measurable subsets have non negative n0 em measure where also P has positive m measure Conceptually we re looking for a set P where n0 e m in every part of P A convenient approach is to use the Hahn decomposition P N for the signed measure n0 e m Note then that for every A S one has n0 A P e m A P and hence n A A g d m n 0 A A g d m n 0 A P A g d m e m A P A g e 1 P d m displaystyle begin aligned nu A amp int A g d mu nu 0 A amp geq int A g d mu nu 0 A cap P amp geq int A g d mu varepsilon mu A cap P int A left g varepsilon 1 P right d mu end aligned nbsp where 1P is the indicator function of P Also note that m P gt 0 as desired for if m P 0 then since n is absolutely continuous in relation to m n0 P n P 0 so n0 P 0 and n 0 X e m X n 0 e m N 0 displaystyle nu 0 X varepsilon mu X left nu 0 varepsilon mu right N leq 0 nbsp contradicting the fact that n0 X gt em X Then since also X g e 1 P d m n X lt displaystyle int X left g varepsilon 1 P right d mu leq nu X lt infty nbsp g e 1P F and satisfies X g e 1 P d m gt X g d m sup f F X f d m displaystyle int X left g varepsilon 1 P right d mu gt int X g d mu sup f in F int X f d mu nbsp This is impossible because it violates the definition of a supremum therefore the initial assumption that n0 0 must be false Hence n0 0 as desired Restricting to finite values Now since g is m integrable the set x X g x is m null Therefore if a f is defined as f x g x if g x lt 0 otherwise displaystyle f x begin cases g x amp text if g x lt infty 0 amp text otherwise end cases nbsp then f has the desired properties Uniqueness As for the uniqueness let f g X 0 be measurable functions satisfying n A A f d m A g d m displaystyle nu A int A f d mu int A g d mu nbsp for every measurable set A Then g f is m integrable and A g f d m 0 displaystyle int A g f d mu 0 nbsp In particular for A x X f x gt g x or x X f x lt g x It follows that X g f d m 0 X g f d m displaystyle int X g f d mu 0 int X g f d mu nbsp and so that g f 0 m almost everywhere the same is true for g f and thus f g m almost everywhere as desired For s finite positive measures Edit If m and n are s finite then X can be written as the union of a sequence Bn n of disjoint sets in S each of which has finite measure under both m and n For each n by the finite case there is a S measurable function fn Bn 0 such that n n A A f n d m displaystyle nu n A int A f n d mu nbsp for each S measurable subset A of Bn The sum n f n 1 B n f textstyle left sum n f n 1 B n right f nbsp of those functions is then the required function such that n A A f d m textstyle nu A int A f d mu nbsp As for the uniqueness since each of the fn is m almost everywhere unique so is f For signed and complex measures Edit If n is a s finite signed measure then it can be Hahn Jordan decomposed as n n n where one of the measures is finite Applying the previous result to those two measures one obtains two functions g h X 0 satisfying the Radon Nikodym theorem for n and n respectively at least one of which is m integrable i e its integral with respect to m is finite It is clear then that f g h satisfies the required properties including uniqueness since both g and h are unique up to m almost everywhere equality If n is a complex measure it can be decomposed as n n1 in2 where both n1 and n2 are finite valued signed measures Applying the above argument one obtains two functions g h X 0 satisfying the required properties for n1 and n2 respectively Clearly f g ih is the required function The Lebesgue decomposition theorem EditLebesgue s decomposition theorem shows that the assumptions of the Radon Nikodym theorem can be found even in a situation which is seemingly more general Consider a s finite positive measure m displaystyle mu nbsp on the measure space X S displaystyle X Sigma nbsp and a s finite signed measure n displaystyle nu nbsp on S displaystyle Sigma nbsp without assuming any absolute continuity Then there exist unique signed measures n a displaystyle nu a nbsp and n s displaystyle nu s nbsp on S displaystyle Sigma nbsp such that n n a n s displaystyle nu nu a nu s nbsp n a m displaystyle nu a ll mu nbsp and n s m displaystyle nu s perp mu nbsp The Radon Nikodym theorem can then be applied to the pair n a m displaystyle nu a mu nbsp See also EditGirsanov theorem Radon Nikodym setNotes Edit Billingsley Patrick 1995 Probability and Measure Third ed New York John Wiley amp Sons pp 419 427 ISBN 0 471 00710 2 Nikodym O 1930 Sur une generalisation des integrales de M J Radon PDF Fundamenta Mathematicae in French 15 131 179 doi 10 4064 fm 15 1 131 179 JFM 56 0922 02 Retrieved 2018 01 30 Zaanen Adriaan C 1996 Introduction to Operator Theory in Riesz Spaces Springer ISBN 3 540 61989 5 Calculating Radon Nikodym derivative Stack Exchange April 7 2018 a b Brown Arlen Pearcy Carl 1977 Introduction to Operator Theory I Elements of Functional Analysis ISBN 978 1461299288 Fonseca Irene Leoni Giovanni Modern Methods in the Calculus of Variations Lp Spaces Springer p 68 ISBN 978 0 387 35784 3 References EditLang Serge 1969 Analysis II Real analysis Addison Wesley Contains a proof for vector measures assuming values in a Banach space Royden H L Fitzpatrick P M 2010 Real Analysis 4th ed Pearson Contains a lucid proof in case the measure n is not s finite Shilov G E Gurevich B L 1978 Integral Measure and Derivative A Unified Approach Richard A Silverman trans Dover Publications ISBN 0 486 63519 8 Stein Elias M Shakarchi Rami 2005 Real analysis measure theory integration and Hilbert spaces Princeton lectures in analysis Princeton N J Princeton University Press ISBN 978 0 691 11386 9 Contains a proof of the generalisation Teschl Gerald Topics in Real and Functional Analysis lecture notes This article incorporates material from Radon Nikodym theorem on PlanetMath which is licensed under the Creative Commons Attribution Share Alike License Retrieved from https en wikipedia org w index php title Radon Nikodym theorem amp oldid 1125998268 Radon Nikodym derivative, wikipedia, wiki, book, books, library,

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