Binary matrix factorization on special purpose hardware
Osman Asif Malik, Hayato Ushijima-Mwesigwa, Arnab Roy, Avradip Mandal,, Indradeep Ghosh

TL;DR
This paper introduces QUBO formulations for binary matrix factorization, leveraging special hardware like quantum-inspired annealers to improve accuracy and handle large matrices through sampling techniques.
Contribution
It presents novel QUBO models for BMF, incorporates clustering constraints, and proposes a sampling approach to enable large-scale factorization on limited hardware.
Findings
QUBO formulations improve BMF accuracy
Sampling method enables large matrix factorization
Experiments on real data validate approach effectiveness
Abstract
Many fundamental problems in data mining can be reduced to one or more NP-hard combinatorial optimization problems. Recent advances in novel technologies such as quantum and quantum-inspired hardware promise a substantial speedup for solving these problems compared to when using general purpose computers but often require the problem to be modeled in a special form, such as an Ising or quadratic unconstrained binary optimization (QUBO) model, in order to take advantage of these devices. In this work, we focus on the important binary matrix factorization (BMF) problem which has many applications in data mining. We propose two QUBO formulations for BMF. We show how clustering constraints can easily be incorporated into these formulations. The special purpose hardware we consider is limited in the number of variables it can handle which presents a challenge when factorizing large matrices.…
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