Multi-Tensor Network Representation for High-Order Tensor Completion

22 Pages Posted: 29 Oct 2022

See all articles by Chang Nie

Chang Nie

Nanjing University of Science and Technology

Huan Wang

Nanjing University of Science and Technology

Zhihui Lai

Shenzhen University

Abstract

This work studies the problem of high-dimensional data (referred to as tensors) completion from partially observed samplings. We consider that a tensor is a superposition of multiple low-rank components. In particular, each component can be represented as multilinear connections over several latent factors and naturally mapped to a specific tensor network (TN) topology. In this paper, we propose a fundamental tensor decomposition (TD) framework: Multi-Tensor Network Representation (MTNR), which can be regarded as a linear combination of a range of TD models, e.g., CANDECOMP/PARAFAC (CP) decomposition, Tensor Train (TT), and Tensor Ring (TR). Specifically, MTNR represents a high-order tensor as the addition of multiple TN models, and the topology of each TN is automatically generated instead of manually pre-designed. For the optimization phase, an adaptive topology learning (ATL) algorithm is presented to obtain latent factors of each TN based on a rank incremental strategy and a projection error measurement strategy. In addition, we theoretically establish the fundamental multilinear operations for the tensors with TN representation, and reveal the structural transformation of MTNR to a single TN. Finally, MTNR is applied to a typical task, tensor completion, and two effective algorithms are proposed for the exact recovery of incomplete data based on the Alternating Least Squares (ALS) scheme and Alternating Direction Method of Multiplier (ADMM) framework. Extensive numerical experiments on synthetic data and real-world datasets demonstrate the effectiveness of MTNR compared with the start-of-the-art methods.

Keywords: Tensor network, tensor completion, tensor decomposition, adaptive topology learning

Suggested Citation

Nie, Chang and Wang, Huan and Lai, Zhihui, Multi-Tensor Network Representation for High-Order Tensor Completion. Available at SSRN: https://ssrn.com/abstract=4261916

Chang Nie

Nanjing University of Science and Technology ( email )

No.219, Ningliu Road
Nanjing, 210094
China

Huan Wang (Contact Author)

Nanjing University of Science and Technology ( email )

No.219, Ningliu Road
Nanjing, 210094
China

Zhihui Lai

Shenzhen University ( email )

3688 Nanhai Road, Nanshan District
Shenzhen, 518060
China

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
41
Abstract Views
163
PlumX Metrics