3.8 Proceedings Paper

STATISTICAL LEARNING USING HIERARCHICAL MODELING OF PROBABILITY TENSORS

Journal

2019 IEEE DATA SCIENCE WORKSHOP (DSW)
Volume -, Issue -, Pages 290-294

Publisher

IEEE
DOI: 10.1109/dsw.2019.8755580

Keywords

tensors; probability; polyadic decomposition; non-parametric estimation; distributed and parallel methods

Funding

  1. NSF [IIS-1704074, IIS-1447788]

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Estimating the joint distribution of data sampled from an unknown distribution is the holy grail for modeling the structure of a dataset and deriving any desired optimal estimator. Leveraging the mere definition of conditional probability, we address the complexity of accurately estimating high-dimensional joint distributions without any assumptions on the underlying structural model by proposing a novel hierarchical learning algorithm for probability mass function (PMF) estimation through parallel local views of a probability tensor. This way the overall problem of estimating a joint distribution is divided into multiple subproblems, all of which are conquered independently by applying regional low-rank non-negative tensor models using the Canonical Polyadic Decomposition (CPD). Using conditioning, such parallelization is possible without losing sight of the full model - which can be reconstructed from the local models and the conditional probabilities. We illustrate the effectiveness and potential of our approach through judicious experiments on real datasets.

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