A New Convex Relaxation for Tensor Completion

We study the problem of learning a tensor from a set of linear measurements. A prominent methodology for this problem is based on a generalization of trace norm regularization, which has been used extensively for learning low rank matrices, to the tensor setting. In this paper, we highlight some limitations of this approach and propose an alternative convex relaxation on the Euclidean ball. We then describe a technique to solve the associated regularization problem, which builds upon the alternating direction method of multipliers. Experiments on one synthetic dataset and two real datasets indicate that the proposed method improves significantly over tensor trace norm regularization in terms of estimation error, while remaining computationally tractable.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/28/2020

Alternating minimization algorithms for graph regularized tensor completion

We consider a low-rank tensor completion (LRTC) problem which aims to re...
research
09/06/2015

Theoretical and Experimental Analyses of Tensor-Based Regression and Classification

We theoretically and experimentally investigate tensor-based regression ...
research
06/02/2012

Sparse Trace Norm Regularization

We study the problem of estimating multiple predictive functions from a ...
research
11/04/2022

Spectral Regularization: an Inductive Bias for Sequence Modeling

Various forms of regularization in learning tasks strive for different n...
research
02/12/2020

Deep Multi-Task Learning via Generalized Tensor Trace Norm

The trace norm is widely used in multi-task learning as it can discover ...
research
07/19/2013

Tensor-based formulation and nuclear norm regularization for multi-energy computed tomography

The development of energy selective, photon counting X-ray detectors all...
research
10/05/2010

Estimation of low-rank tensors via convex optimization

In this paper, we propose three approaches for the estimation of the Tuc...

Please sign up or login with your details

Forgot password? Click here to reset