基于免疫网络的数据聚类动态免疫算法

Lei Wu, Lei Peng
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引用次数: 4

摘要

提出了一种用于数据聚类分析的动态免疫算法。引入部分受自组织映射理论启发的免疫机制,调节抗体的数量,提高聚类质量。为了保证高度非线性分布输入的聚类质量,采用核方法提高聚类质量。为了增强在输入空间中对聚类中心和结果的直接描述,在训练过程仍在输入空间中运行的情况下,采用核代入法引入一个新的距离维来代替欧氏距离。仿真结果验证了算法的可行性、聚类性能和抗噪声能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Dynamic Immune Algorithm with Immune Network for Data Clustering
This paper proposes a dynamic immune algorithm used for data clustering analysis. Its immune mechanism, partially inspired by self-organized mapping theory, is introduced to adjust the antibody's quantity and improve clustering quality. In order to guarantee clustering quality for highly non-linear distributed inputs, kernel method is adopted to increase the clustering quality. In order to enhance direct descriptions about the clustering's center and result in input space, a new distance dimension instead of Euclidean distance is introduced by adopting kernel substitution method while the training procedure is still running in input space. Simulation results are also provided to verify the algorithm's feasibility, clustering performance and anti-noise capability.
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