Multi-Agent Evolutionary Clustering Algorithm Based on Manifold Distance

Xiaoying Pan, Hao Chen
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引用次数: 8

Abstract

By using the manifold distance as the similarity measurement, a multi-agent evolutionary clustering algorithm based on manifold distance (MAEC-MD) is proposed in this paper. MAEC-MD designs a new connection based encoding, and the clustering results can be obtained by the process of decoding directly. It does not require the number of clusters to be known beforehand and overcomes the dependence of the domain knowledge. Aim at solving the clustering problem, three effective evolutionary operators are designed for competition, cooperation, and self-learning of an agent. Some experiments about artificial data, UCI data are tested. These results show that MAEC-MD can confirm the number of clusters automatically, tackle the data with different structures, and satisfy the diverse clustering request.
基于流形距离的多智能体进化聚类算法
本文以流形距离作为相似性度量,提出了一种基于流形距离的多智能体进化聚类算法。MAEC-MD设计了一种新的基于连接的编码方法,直接通过解码过程获得聚类结果。它不需要事先知道聚类的数量,克服了对领域知识的依赖。针对聚类问题,设计了三种有效的进化算子,分别用于智能体的竞争、合作和自学习。对人工数据、UCI数据进行了实验。结果表明,MAEC-MD能够自动确定聚类数量,处理不同结构的数据,满足不同的聚类需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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