Entry-Specific Matrix Estimation under Arbitrary Sampling Patterns through the Lens of Network Flows
Yudong Chen, Xumei Xi, and Christina Lee Yu

TL;DR
This paper introduces a novel matrix completion method based on network flows that effectively handles arbitrary sampling patterns, providing entry-specific error bounds and insights into the complexity of estimation.
Contribution
It develops a new family of estimators using network flows, offering a detailed understanding of how sampling patterns affect matrix completion accuracy.
Findings
Error bounds are proportional to effective resistance in the graph
Estimator is equivalent to least squares in additive models
Achieves minimax optimality for rank-1 matrices with dense sampling
Abstract
Matrix completion tackles the task of predicting missing values in a low-rank matrix based on a sparse set of observed entries. It is often assumed that the observation pattern is generated uniformly at random or has a very specific structure tuned to a given algorithm. There is still a gap in our understanding when it comes to arbitrary sampling patterns. Given an arbitrary sampling pattern, we introduce a matrix completion algorithm based on network flows in the bipartite graph induced by the observation pattern. For additive matrices, the particular flow we used is the electrical flow and we establish error upper bounds customized to each entry as a function of the observation set, along with matching minimax lower bounds. Our results show that the minimax squared error for recovery of a particular entry in the matrix is proportional to the effective resistance of the corresponding…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Opinion Dynamics and Social Influence · Random Matrices and Applications
MethodsSparse Evolutionary Training
