Lebesgue's decomposition theorem

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Template:Short description In mathematics, more precisely in measure theory, the Lebesgue decomposition theoremTemplate:Sfn provides a way to decompose a measure into two distinct parts based on their relationship with another measure.

Definition

The theorem states that if (Ω,Σ) is a measurable space and μ and ν are σ-finite signed measures on Σ, then there exist two uniquely determined σ-finite signed measures ν0 and ν1 such that:Template:SfnTemplate:Sfn

Refinement

Lebesgue's decomposition theorem can be refined in a number of ways. First, as the Lebesgue-Radon-Nikodym theorem. That is, let (Ω,Σ) be a measure space, μ a σ-finite positive measure on Σ and λ a complex measure on Σ.Template:Sfn

  • There is a unique pair of complex measures on Σ such that λ=λa+λs,λaμ,λsμ. If λ is positive and finite, then so are λa and λs.
  • There is a unique hL1(μ) such that λa(E)=Ehdμ,EΣ.

The first assertion follows from the Lebesgue decomposition, the second is known as the Radon-Nikodym theorem. That is, the function h is a Radon-Nikodym derivative that can be expressed as h=dλadμ.

An alternative refinement is that of the decomposition of a regular Borel measureTemplate:SfnTemplate:SfnTemplate:Sfn ν=νac+νsc+νpp, where

  • νacμ is the absolutely continuous part
  • νscμ is the singular continuous part
  • νpp is the pure point part (a discrete measure).

The absolutely continuous measures are classified by the Radon–Nikodym theorem, and discrete measures are easily understood. Hence (singular continuous measures aside), Lebesgue decomposition gives a very explicit description of measures. The Cantor measure (the probability measure on the real line whose cumulative distribution function is the Cantor function) is an example of a singular continuous measure.

Lévy–Itō decomposition

Template:Main The analogousTemplate:Citation needed decomposition for a stochastic processes is the Lévy–Itō decomposition: given a Lévy process X, it can be decomposed as a sum of three independent Lévy processes X=X(1)+X(2)+X(3) where:

See also

Notes

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References

Template:PlanetMath attribution