Cox process

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Template:Short description In probability theory, a Cox process, also known as a doubly stochastic Poisson process is a point process which is a generalization of a Poisson process where the intensity that varies across the underlying mathematical space (often space or time) is itself a stochastic process. The process is named after the statistician David Cox, who first published the model in 1955.[1]

Cox processes are used to generate simulations of spike trains (the sequence of action potentials generated by a neuron),[2] and also in financial mathematics where they produce a "useful framework for modeling prices of financial instruments in which credit risk is a significant factor."[3]

Definition

Let ξ be a random measure.

A random measure η is called a Cox process directed by ξ, if (ηξ=μ) is a Poisson process with intensity measure μ.

Here, (ηξ=μ) is the conditional distribution of η, given {ξ=μ}.

Laplace transform

If η is a Cox process directed by ξ, then η has the Laplace transform

η(f)=exp(1exp(f(x))ξ(dx))

for any positive, measurable function f.

See also

References

Notes

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Bibliography

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