Noisy tensor completion via the sum-of-squares hierarchy
- PMID: 35702694
- PMCID: PMC9187579
- DOI: 10.1007/s10107-022-01793-9
Noisy tensor completion via the sum-of-squares hierarchy
Abstract
In the noisy tensor completion problem we observe m entries (whose location is chosen uniformly at random) from an unknown tensor T. We assume that T is entry-wise close to being rank r. Our goal is to fill in its missing entries using as few observations as possible. Let . We show that if then there is a polynomial time algorithm based on the sixth level of the sum-of-squares hierarchy for completing it. Our estimate agrees with almost all of T's entries almost exactly and works even when our observations are corrupted by noise. This is also the first algorithm for tensor completion that works in the overcomplete case when , and in fact it works all the way up to . Our proofs are short and simple and are based on establishing a new connection between noisy tensor completion (through the language of Rademacher complexity) and the task of refuting random constraint satisfaction problems. This connection seems to have gone unnoticed even in the context of matrix completion. Furthermore, we use this connection to show matching lower bounds. Our main technical result is in characterizing the Rademacher complexity of the sequence of norms that arise in the sum-of-squares relaxations to the tensor nuclear norm. These results point to an interesting new direction: Can we explore computational vs. sample complexity tradeoffs through the sum-of-squares hierarchy?
Keywords: 68W40 (Analysis of algorithms); 90C22 (Semidefinite programming).
© The Author(s) 2022.
References
-
- Abbe, E., Sandon, C.: Community detection in general stochastic block models: fundamental limits and efficient algorithms for recovery. In IEEE 56th Annual Symposium on Foundations of Computer Science, FOCS 2015, Berkeley, CA, USA, 17-20 October, 2015, pp. 670–688 (2015)
-
- Anandkumar A, Foster DP, Hsu D, Kakade SM, Liu Y-K. A spectral algorithm for latent Dirichlet allocation. Algorithmica. 2015;72(1):193–214. doi: 10.1007/s00453-014-9909-1. - DOI
-
- Anandkumar, A., Ge, R., Hsu, D., Kakade, S.: A tensor spectral approach to learning mixed embership community models. In COLT 2013 - The 26th Annual Conference on Learning Theory, June 12–14, 2013, Princeton University, NJ, pp. 867–881 (2013)
-
- Barak, B., Brandão, F.G.S.L., Harrow, A.W., Kelner, J.A., Steurer, D., Zhou, Y.: Hypercontractivity, sum-of-squares proofs, and their applications. In Proceedings of the 44th Symposium on Theory of Computing Conference, STOC 2012, New York, NY, USA, May 19— 22, 2012, pp. 307–326, (2012)
-
- Barak B, Hopkins S, Kelner J, Kothari PK, Moitra A, Potechin A. A nearly tight sum-of-squares lower bound for the planted clique problem. SIAM J. Comput. 2019;48(2):687–735. doi: 10.1137/17M1138236. - DOI
LinkOut - more resources
Full Text Sources