Publication | Open Access
Adaptive density estimation for clustering with Gaussian mixtures
27
Citations
11
References
2012
Year
Mixture DistributionEngineeringDensity EstimationMixture ModelsData SciencePattern RecognitionGaussian MixturesSuch DensitiesGaussian Mixture ModelsMixture AnalysisBayesian MethodsStatistical InferenceAdaptive Density EstimationStatisticsUnsupervised Machine Learning
Gaussian mixture models are widely used to study clustering problems. These model-based clustering methods require an accurate estimation of the unknown data density by Gaussian mixtures. In Maugis and Michel (2009), a penalized maximum likelihood estimator is proposed for automatically selecting the number of mixture components. In the present paper, a collection of univariate densities whose logarithm is locally β-Hölder with moment and tail conditions are considered. We show that this penalized estimator is minimax adaptive to the β regularity of such densities in the Hellinger sense.
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