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    From Adaptive Kernel Density Estimation to Sparse Mixture Models

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    We introduce a balloon estimator in a generalized expectation-maximization method for estimating all parameters of a Gaussian mixture model given one data sample per mixture component. Instead of limiting explicitly the model size, this regularization strategy yields low-complexity sparse models where the number of effective mixture components reduces with an increase of a smoothing probability parameter P>0\mathbf{P>0}. This semi-parametric method bridges from non-parametric adaptive kernel density estimation (KDE) to parametric ordinary least-squares when P=1\mathbf{P=1}. Experiments show that simpler sparse mixture models retain the level of details present in the adaptive KDE solution.Comment: in Proceedings of iTWIST'18, Paper-ID: 20, Marseille, France, November, 21-23, 201
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