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arxiv: 1509.09129 · v1 · pith:32O6IFZTnew · submitted 2015-09-30 · 🧮 math.ST · stat.TH

Multidimensional two-component Gaussian mixtures detection

classification 🧮 math.ST stat.TH
keywords varepsilontwo-componentconsidereddensitydetectiongaussianmixtureallowing
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Let $(X\_1,\ldots,X\_n)$ be a $d$-dimensional i.i.d sample from a distribution with density $f$. The problem of detection of a two-component mixture is considered. Our aim is to decide whether $f$ is the density of a standard Gaussian random $d$-vector ($f=\phi\_d$) against $f$ is a two-component mixture: $f=(1-\varepsilon)\phi\_d +\varepsilon \phi\_d (.-\mu)$ where $(\varepsilon,\mu)$ are unknown parameters. Optimal separation conditions on $\varepsilon, \mu, n$ and the dimension $d$ are established, allowing to separate both hypotheses with prescribed errors. Several testing procedures are proposed and two alternative subsets are considered.

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