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arxiv: 1906.06776 · v2 · submitted 2019-06-16 · 📊 stat.ML · cs.LG· math.ST· stat.TH

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Global Convergence of Least Squares EM for Demixing Two Log-Concave Densities

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classification 📊 stat.ML cs.LGmath.STstat.TH
keywords convergencelog-concavegloballeastpropertysquaresdensitiesgaussian
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This work studies the location estimation problem for a mixture of two rotation invariant log-concave densities. We demonstrate that Least Squares EM, a variant of the EM algorithm, converges to the true location parameter from a randomly initialized point. We establish the explicit convergence rates and sample complexity bounds, revealing their dependence on the signal-to-noise ratio and the tail property of the log-concave distribution. Moreover, we show that this global convergence property is robust under model mis-specification. Our analysis generalizes previous techniques for proving the convergence results for Gaussian mixtures. In particular, we make use of an angle-decreasing property for establishing global convergence of Least Squares EM beyond Gaussian settings, as $\ell_2$ distance contraction no longer holds globally for general log-concave mixtures.

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