资源论文Slice sampling normalized kernel-weighted completely random measure mixture models

Slice sampling normalized kernel-weighted completely random measure mixture models

2020-01-13 | |  59 |   34 |   0

Abstract

A number of dependent nonparametric processes have been proposed to model non-stationary data with unknown latent dimensionality. However, the inference algorithms are often slow and unwieldy, and are in general highly specific to a given model formulation. In this paper, we describe a large class of dependent nonparametric processes, including several existing models, and present a slice sampler that allows efficient inference across this class of models.

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