A pareto ensemble based spectral clustering framework

Author:

Luo JuanjuanORCID,Ma Huadong,Zhou Dongqing

Abstract

AbstractSimilarity matrix has a significant effect on the performance of the spectral clustering, and how to determine the neighborhood in the similarity matrix effectively is one of its main difficulties. In this paper, a “divide and conquer” strategy is proposed to model the similarity matrix construction task by adopting Multiobjective evolutionary algorithm (MOEA). The whole procedure is divided into two phases, phase I aims to determine the nonzero entries of the similarity matrix, and Phase II aims to determine the value of the nonzero entries of the similarity matrix. In phase I, the main contribution is that we model the task as a biobjective dynamic optimization problem, which optimizes the diversity and the similarity at the same time. It makes each individual determine one nonzero entry for each sample, and the encoding length decreases to O(N) in contrast with the non-ensemble multiobjective spectral clustering. In addition, a specific initialization operator and diversity preservation strategy are proposed during this phase. In phase II, three ensemble strategies are designed to determine the value of the nonzero value of the similarity matrix. Furthermore, this Pareto ensemble framework is extended to semi-supervised clustering by transforming the semi-supervised information to constraints. In contrast with the previous multiobjective evolutionary-based spectral clustering algorithms, the proposed Pareto ensemble-based framework makes a balance between time cost and the clustering accuracy, which is demonstrated in the experiments section.

Funder

National Natural Science Foundation of China

Publisher

Springer Science and Business Media LLC

Subject

General Earth and Planetary Sciences,General Environmental Science

Reference53 articles.

1. Albukhanajer WA, Jin Y, Briffa JA (2014) Neural network ensembles for image identification using pareto-optimal features. In: Evolutionary computation, pp 89–96

2. Cai D, Chen X (2014) Large scale spectral clustering via landmark-based sparse representation. IEEE Trans Cybern 45(8):1669–1680

3. Chen H, Yao X (2010) Multiobjective neural network ensembles based on regularized negative correlation learning. IEEE Trans Knowl Data Eng 22(12):1738–1751

4. Chen WY, Song Y, Bai H, Lin CJ, Chang EY (2010) Parallel spectral clustering in distributed systems. IEEE Trans Pattern Anal Mach Intell 33(3):568–586

5. Cheng S, Lu H, Lei X, Shi Y (2018) A quarter century of particle swarm optimization. Complex Intell Syst 64:227–239

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