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dc.contributor.authorZou, James Yang
dc.contributor.authorAdams, Ryan Prescott
dc.date.accessioned2014-01-13T21:01:42Z
dc.date.issued2012
dc.identifierQuick submit: 2013-08-08T11:57:00-04:00
dc.identifier.citationZou, James Y. and Ryan Prescott Adams. 2012. Priors for Diversity in Generative Latent Variable Models. In Advances in Neural Information Processing Systems 25, ed. P. Bartlett and F.C.N. Pereira and C.J.C. Burges and L. Bottou and K.Q. Weinberger, 3005-3013.en_US
dc.identifier.isbn9781627480031en_US
dc.identifier.urihttp://nrs.harvard.edu/urn-3:HUL.InstRepos:11510266
dc.description.abstractProbabilistic latent variable models are one of the cornerstones of machine learning. They offer a convenient and coherent way to specify prior distributions over unobserved structure in data, so that these unknown properties can be inferred via posterior inference. Such models are useful for exploratory analysis and visualization, for building density models of data, and for providing features that can be used for later discriminative tasks. A significant limitation of these models, however, is that draws from the prior are often highly redundant due to i.i.d. assumptions on internal parameters. For example, there is no preference in the prior of a mixture model to make components non-overlapping, or in topic model to ensure that co-occurring words only appear in a small number of topics. In this work, we revisit these independence assumptions for probabilistic latent variable models, replacing the underlying i.i.d. prior with a determinantal point process (DPP). The DPP allows us to specify a preference for diversity in our latent variables using a positive definite kernel function. Using a kernel between probability distributions, we are able to define a DPP on probability measures. We show how to perform MAP inference with DPP priors in latent Dirichlet allocation and in mixture models, leading to better intuition for the latent variable representation and quantitatively improved unsupervised feature extraction, without compromising the generative aspects of the model.en_US
dc.description.sponsorshipEngineering and Applied Sciencesen_US
dc.language.isoen_USen_US
dc.publisherCurran Associates, Inc.en_US
dash.licenseOAP
dc.titlePriors for Diversity in Generative Latent Variable Modelsen_US
dc.typeConference Paperen_US
dc.date.updated2013-08-08T15:57:29Z
dc.description.versionAccepted Manuscripten_US
dc.rights.holderJames Y. Zou; Ryan Prescott Adams
dash.depositing.authorAdams, Ryan Prescott
dc.date.available2014-01-13T21:01:42Z
dash.contributor.affiliatedZou, James
dash.contributor.affiliatedAdams, Ryan Prescott


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