STATIONARY SYSTEMS OF GAUSSIAN PROCESSES

2010 | journal article. A publication with affiliation to the University of Göttingen.

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​STATIONARY SYSTEMS OF GAUSSIAN PROCESSES​
Kabluchko, Z.​ (2010) 
The Annals of Applied Probability20(6) pp. 2295​-2317​.​ DOI: https://doi.org/10.1214/10-AAP686 

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Authors
Kabluchko, Zakhar
Abstract
We describe all countable particle systems on R which have the following three properties: independence, Gaussianity and stationarity. More precisely, we consider particles on the real line starting at the points of a Poisson point process with intensity measure m and moving independently of each other according to the law of some Gaussian process xi. We classify all pairs (m, xi) generating a stationary particle system, obtaining three families of examples. In the first, trivial family, the measure m is arbitrary, whereas the process xi is stationary. In the second family, the measure m is a multiple of the Lebesgue measure, and xi is essentially a Gaussian stationary increment process with linear drift. In the third, most interesting family, the measure m has a density of the form alpha e(-lambda x), where alpha > 0, lambda is an element of R, whereas the process xi is of the form xi(t) = W(t)-lambda sigma(2)(t)/2+c, where W is a zero-mean Gaussian process with stationary increments, sigma(2)(t) = VarW(t), and c is an element of R.
Issue Date
2010
Status
published
Publisher
Inst Mathematical Statistics
Journal
The Annals of Applied Probability 
ISSN
1050-5164

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