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The kernel beta process

Published: 12 December 2011 Publication History

Abstract

A new Lévy process prior is proposed for an uncountable collection of covariate-dependent feature-learning measures; the model is called the kernel beta process (KBP). Available covariates are handled efficiently via the kernel construction, with covariates assumed observed with each data sample ("customer"), and latent covariates learned for each feature ("dish"). Each customer selects dishes from an infinite buffet, in a manner analogous to the beta process, with the added constraint that a customer first decides probabilistically whether to "consider" a dish, based on the distance in covariate space between the customer and dish. If a customer does consider a particular dish, that dish is then selected probabilistically as in the beta process. The beta process is recovered as a limiting case of the KBP. An efficient Gibbs sampler is developed for computations, and state-of-the-art results are presented for image processing and music analysis tasks.

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cover image Guide Proceedings
NIPS'11: Proceedings of the 24th International Conference on Neural Information Processing Systems
December 2011
2752 pages

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Curran Associates Inc.

Red Hook, NY, United States

Publication History

Published: 12 December 2011

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