Binary matrix factorization via collaborative neurodynamic optimization

Neural Netw. 2024 Apr 30:176:106348. doi: 10.1016/j.neunet.2024.106348. Online ahead of print.

Abstract

Binary matrix factorization is an important tool for dimension reduction for high-dimensional datasets with binary attributes and has been successfully applied in numerous areas. This paper presents a collaborative neurodynamic optimization approach to binary matrix factorization based on the original combinatorial optimization problem formulation and quadratic unconstrained binary optimization problem reformulations. The proposed approach employs multiple discrete Hopfield networks operating concurrently in search of local optima. In addition, a particle swarm optimization rule is used to reinitialize neuronal states iteratively to escape from local minima toward better ones. Experimental results on eight benchmark datasets are elaborated to demonstrate the superior performance of the proposed approach against six baseline algorithms in terms of factorization error. Additionally, the viability of the proposed approach is demonstrated for pattern discovery on three datasets.

Keywords: Binary matrix factorization; Collaborative neurodynamic optimization; Discrete Hopfield network; Pattern discovery; Quadratic unconstrained binary optimization.