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arxiv: 1506.08772 · v1 · pith:NHXZXLS6new · submitted 2015-06-29 · 🧮 math.PR

A central limit theorem for the Euler integral of a Gaussian random field

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keywords eulerapplicationscentralfirstgaussianintegrallimitnoise
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Euler integrals of deterministic functions have recently been shown to have a wide variety of possible applications, including in signal processing, data aggregation and network sensing. Adding random noise to these scenarios, as is natural in the majority of applications, leads to a need for statistical analysis, the first step of which requires asymptotic distribution results for estimators. The first such result is provided in this paper, as a central limit theorem for the Euler integral of pure, Gaussian, noise fields.

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