Low-CP-rank Tensor Completion via Practical Regularization

03/31/2021
by   Jiahua Jiang, et al.
0

Dimension reduction techniques are often used when the high-dimensional tensor has relatively low intrinsic rank compared to the ambient dimension of the tensor. The CANDECOMP/PARAFAC (CP) tensor completion is a widely used approach to find a low-rank approximation for a given tensor. In the tensor model, an ℓ_1 regularized optimization problem was formulated with an appropriate choice of the regularization parameter. The choice of the regularization parameter is important in the approximation accuracy. However, the emergence of the large amount of data poses onerous computational burden for computing the regularization parameter via classical approaches such as the weighted generalized cross validation (WGCV), the unbiased predictive risk estimator, and the discrepancy principle. In order to improve the efficiency of choosing the regularization parameter and leverage the accuracy of the CP tensor, we propose a new algorithm for tensor completion by embedding the flexible hybrid method into the framework of the CP tensor. The main benefits of this method include incorporating regularization automatically and efficiently, improved reconstruction and algorithmic robustness. Numerical examples from image reconstruction and model order reduction demonstrate the performance of the propose algorithm.

READ FULL TEXT

page 10

page 11

page 12

page 14

research
03/27/2017

Randomized CP Tensor Decomposition

The CANDECOMP/PARAFAC (CP) tensor decomposition is a popular dimensional...
research
10/22/2020

CP Degeneracy in Tensor Regression

Tensor linear regression is an important and useful tool for analyzing t...
research
10/18/2022

Multi-Parameter Performance Modeling via Tensor Completion

Performance tuning, software/hardware co-design, and job scheduling are ...
research
04/22/2020

A Unified Theory for Tensor Ranks and its Application

In this paper, we present a unified theory for tensor ranks such that th...
research
07/03/2023

Tensor Sandwich: Tensor Completion for Low CP-Rank Tensors via Adaptive Random Sampling

We propose an adaptive and provably accurate tensor completion approach ...
research
06/24/2022

Variational Bayesian inference for CP tensor completion with side information

We propose a message passing algorithm, based on variational Bayesian in...
research
07/22/2022

A Supervised Tensor Dimension Reduction-Based Prognostics Model for Applications with Incomplete Imaging Data

This paper proposes a supervised dimension reduction methodology for ten...

Please sign up or login with your details

Forgot password? Click here to reset