19
0
v1v2 (latest)

The AL0\ell_0CORE Tensor Decomposition for Sparse Count Data

Abstract

This paper introduces AL0\ell_0CORE, a new form of probabilistic non-negative tensor decomposition. AL0\ell_0CORE is a Tucker decomposition where the number of non-zero elements (i.e., the 0\ell_0-norm) of the core tensor is constrained to a preset value QQ much smaller than the size of the core. While the user dictates the total budget QQ, the locations and values of the non-zero elements are latent variables and allocated across the core tensor during inference. AL0\ell_0CORE -- i.e., alloallocated 0\ell_0-coconstrained corecore-- thus enjoys both the computational tractability of CP decomposition and the qualitatively appealing latent structure of Tucker. In a suite of real-data experiments, we demonstrate that AL0\ell_0CORE typically requires only tiny fractions (e.g.,~1%) of the full core to achieve the same results as full Tucker decomposition at only a correspondingly tiny fraction of the cost.

View on arXiv
Comments on this paper