TL;DR
This paper introduces a polynomial-time algorithm for symmetric sparse Boolean matrix factorization, with applications to hypergraph recovery and neural network privacy, leveraging tensor decomposition and probabilistic analysis.
Contribution
It presents the first efficient algorithm for recovering sparse Boolean factors in symmetric matrices, connecting matrix factorization with hypergraph and privacy attack problems.
Findings
Algorithm successfully recovers sparse Boolean factors in polynomial time.
Matrix W has full column rank with high probability under certain conditions.
Uses advanced probabilistic tools like Littlewood-Offord theory and Krawtchouk polynomials.
Abstract
In this work, we study a variant of nonnegative matrix factorization where we wish to find a symmetric factorization of a given input matrix into a sparse, Boolean matrix. Formally speaking, given , we want to find such that is minimized among all for which each row is -sparse. This question turns out to be closely related to a number of questions like recovering a hypergraph from its line graph, as well as reconstruction attacks for private neural network training. As this problem is hard in the worst-case, we study a natural average-case variant that arises in the context of these reconstruction attacks: for a random Boolean matrix with -sparse rows, and the goal is to recover …
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Videos
Symmetric Sparse Boolean Matrix Factorization and Applications· youtube
