Tensor Decomposition With Generalized Lasso Penalties |
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Authors: | Oscar Hernan Madrid-Padilla James Scott |
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Affiliation: | 1. Department of Statistics and Data Sciences, The University of Texas at Austin, Austin, TX;2. Department of Information, Risk, and Operations Management, The University of Texas at Austin, Austin, TX |
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Abstract: | We present an approach for penalized tensor decomposition (PTD) that estimates smoothly varying latent factors in multiway data. This generalizes existing work on sparse tensor decomposition and penalized matrix decompositions, in a manner parallel to the generalized lasso for regression and smoothing problems. Our approach presents many nontrivial challenges at the intersection of modeling and computation, which are studied in detail. An efficient coordinate-wise optimization algorithm for PTD is presented, and its convergence properties are characterized. The method is applied both to simulated data and real data on flu hospitalizations in Texas and motion-capture data from video cameras. These results show that our penalized tensor decomposition can offer major improvements on existing methods for analyzing multiway data that exhibit smooth spatial or temporal features. |
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Keywords: | Convex optimization Multiway data Penalized methods Tensors Trend filtering |
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