Title :
Fast Decomposition of Large Nonnegative Tensors
Author :
Cohen, Jeremy E. ; Farias, Rodrigo Cabral ; Comon, Pierre
Author_Institution :
Images & Signal Dept., GIPSA-Lab., St. Martin d´Hères, France
Abstract :
In signal processing, tensor decompositions have gained in popularity this last decade. In the meantime, the volume of data to be processed has drastically increased. This calls for novel methods to handle Big Data tensors. Since most of these huge data are issued from physical measurements, which are intrinsically real nonnegative, being able to compress nonnegative tensors has become mandatory. Following recent works on HOSVD compression for Big Data, we detail solutions to decompose a nonnegative tensor into decomposable terms in a compressed domain.
Keywords :
Big Data; matrix decomposition; signal processing; tensors; Big Data tensors; HOSVD compression; compressed domain; data processing; large nonnegative tensor fast decomposition; physical measurements; signal processing; Approximation methods; Big data; Convergence; Image coding; Linear programming; Signal processing algorithms; Tensile stress; Big Data; CP decomposition; HOSVD; PARAFAC; compression; nonnegative; tensor;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2014.2374838