A novel tensor tracking algorithm for block-term decomposition of streaming tensors
Abstract: Block-term decomposition (BTD), which factorizes a tensor (aka a multiway array) into block components of low rank, has been a powerful processing tool for multivariate and high-dimensional data analysis. In this paper, we propose a novel tensor tracking method called SBTD for factorizing tensors derived from multidimensional data streams under the BTD format. Thanks to the alternating optimization framework, SBTD first applies a regularized least-squares solver to estimate the temporal factor of the underlying streaming tensor. Then, SBTD adopts an adaptive filter to track the non-temporal tensor factors over time by minimizing a weighted least-squares cost function. Numerical experiments indicate that SBTD is capable of tensor tracking with competitive performance compared to the state-of-the-art BTD algorithms.
Accepted at IEEE SSP 2023.
History
Email Address of Submitting Author
trung-thanh.le@univ-orleans.frORCID of Submitting Author
0000-0002-0036-5160Submitting Author's Institution
Univeristy of OrleansSubmitting Author's Country
- France