Multiscale dictionary learning for estimating conditional distributions

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Petralia, F

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Vogelstein, J

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Dunson, DB

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2017-10-01T21:18:13Z

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2017-10-01T21:18:13Z

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2013-01-01

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Nonparametric estimation of the conditional distribution of a response given highdimensional features is a challenging problem. It is important to allow not only the mean but also the variance and shape of the response density to change flexibly with features, which are massive-dimensional. We propose a multiscale dictionary learning model, which expresses the conditional response density as a convex combination of dictionary densities, with the densities used and their weights dependent on the path through a tree decomposition of the feature space. A fast graph partitioning algorithm is applied to obtain the tree decomposition, with Bayesian methods then used to adaptively prune and average over different sub-trees in a soft probabilistic manner. The algorithm scales efficiently to approximately one million features. State of the art predictive performance is demonstrated for toy examples and two neuroscience applications including up to a million features.

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1049-5258

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https://hdl.handle.net/10161/15600

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Advances in Neural Information Processing Systems

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Multiscale dictionary learning for estimating conditional distributions

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Journal article

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Duke

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Duke Institute for Brain Sciences

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Electrical and Computer Engineering

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Institutes and Provost's Academic Units

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Pratt School of Engineering

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Statistical Science

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Trinity College of Arts & Sciences

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University Institutes and Centers

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