Balanced clustering based on collaborative neurodynamic optimization

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摘要

Balanced clustering is a semi-supervised learning approach to data preprocessing. This paper presents a collaborative neurodynamic algorithm for balanced clustering. The balanced clustering problem is formulated as a combinatorial optimization problem and reformulated as an Ising model. A collaborative neurodynamic algorithm is developed to solve the formulated balanced clustering problem based on a population of discrete Hopfield networks or Boltzmann machines reinitialized upon their local convergence by using a particle swarm optimization rule. The algorithm inherits the desirable property of almost-sure convergence of collaborative neurodynamic optimization. Experimental results on six benchmark datasets are elaborated to demonstrate the superior convergence and performance of the proposed algorithm against four existing balanced clustering algorithms in terms of balanced clustering quality.

论文关键词:Balanced clustering,Combinatorial optimization,Collaborative neurodynamic optimization,Hopfield networks,Boltzmann machines

论文评审过程:Received 13 March 2022, Revised 4 May 2022, Accepted 9 May 2022, Available online 21 May 2022, Version of Record 7 June 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109026