资源论文Thy Friend is My Friend: Iterative Collaborative Filtering for Sparse Matrix Estimation

Thy Friend is My Friend: Iterative Collaborative Filtering for Sparse Matrix Estimation

2020-02-10 | |  61 |   49 |   0

Abstract

 The sparse matrix estimation problem consists of estimating the distribution of an n × n matrix Y , from a sparsely observed single instance of this matrix where the entries of Y are independent random variables. This captures a wide array of problems; special instances include matrix completion in the context of recommendation systems, graphon estimation, and community detection in (mixed membership) stochastic block models. Inspired by classical collaborative filtering for recommendation systems, we propose a novel iterative, collaborative filteringstyle algorithm for matrix estimation in this generic setting. We show that the mean squared error (MSE) of our estimator converges to 0 at the rate of image.pngas long as image.png random entries from a total of image.png entries of Y are observed (uniformly sampled), E[Y ] has rank d, and the entries of Y have bounded support. The maximum squared error across all entries converges to 0 with high probability as long as we observe a little more, image.png entries. Our results are the best known sample complexity results in this generality.

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