On the Fundamental Limits of Matrix Completion: Leveraging Hierarchical Similarity Graphs

09/12/2021
by   Junhyung Ahn, et al.
0

We study the matrix completion problem that leverages hierarchical similarity graphs as side information in the context of recommender systems. Under a hierarchical stochastic block model that well respects practically-relevant social graphs and a low-rank rating matrix model, we characterize the exact information-theoretic limit on the number of observed matrix entries (i.e., optimal sample complexity) by proving sharp upper and lower bounds on the sample complexity. In the achievability proof, we demonstrate that probability of error of the maximum likelihood estimator vanishes for sufficiently large number of users and items, if all sufficient conditions are satisfied. On the other hand, the converse (impossibility) proof is based on the genie-aided maximum likelihood estimator. Under each necessary condition, we present examples of a genie-aided estimator to prove that the probability of error does not vanish for sufficiently large number of users and items. One important consequence of this result is that exploiting the hierarchical structure of social graphs yields a substantial gain in sample complexity relative to the one that simply identifies different groups without resorting to the relational structure across them. More specifically, we analyze the optimal sample complexity and identify different regimes whose characteristics rely on quality metrics of side information of the hierarchical similarity graph. Finally, we present simulation results to corroborate our theoretical findings and show that the characterized information-theoretic limit can be asymptotically achieved.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/02/2022

Matrix Completion with Hierarchical Graph Side Information

We consider a matrix completion problem that exploits social or item sim...
research
12/06/2019

Community Detection and Matrix Completion with Two-Sided Graph Side-Information

We consider the problem of recovering communities of users and communiti...
research
06/08/2020

MC2G: An Efficient Algorithm for Matrix Completion with Social and Item Similarity Graphs

We consider a discrete-valued matrix completion problem for recommender ...
research
08/02/2018

Mixture Matrix Completion

Completing a data matrix X has become an ubiquitous problem in modern da...
research
12/05/2014

Consistent Collective Matrix Completion under Joint Low Rank Structure

We address the collective matrix completion problem of jointly recoverin...
research
01/21/2022

LRSVRG-IMC: An SVRG-Based Algorithm for LowRank Inductive Matrix Completion

Low-rank inductive matrix completion (IMC) is currently widely used in I...
research
03/16/2020

Discrete-valued Preference Estimation with Graph Side Information

Incorporating graph side information into recommender systems has been w...

Please sign up or login with your details

Forgot password? Click here to reset