0000000000745465

AUTHOR

Antonio Canale

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Scalable multiscale density estimation

2014

Although Bayesian density estimation using discrete mixtures has good performance in modest dimensions, there is a lack of statistical and computational scalability to high-dimensional multivariate cases. To combat the curse of dimensionality, it is necessary to assume the data are concentrated near a lower-dimensional subspace. However, Bayesian methods for learning this subspace along with the density of the data scale poorly computationally. To solve this problem, we propose an empirical Bayes approach, which estimates a multiscale dictionary using geometric multiresolution analysis in a first stage. We use this dictionary within a multiscale mixture model, which allows uncertainty in co…

Methodology (stat.ME)FOS: Computer and information sciencesComputingMethodologies_PATTERNRECOGNITIONStatistics - Methodology
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