数据聚类的进化免疫网络

Leandro Nunes, F. V. Zuben
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引用次数: 92

摘要

本文探讨了免疫系统的基本方面,提出了一种新的免疫网络模型,其主要目标是聚类和过滤未标记的数字数据集。我们关心的不是自信地再现任何免疫现象,而是表明免疫概念可用于开发强大的数据处理计算工具。作为我们模型的重要结果,网络进化将能够减少冗余,描述数据结构,包括集群的形状。该网络将与统计推理技术相结合,并将使用两个基准问题来说明其性能。本文的结论是在所提出的网络和用于执行无监督学习的人工神经网络之间进行权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evolutionary immune network for data clustering
This paper explores basic aspects of the immune system and proposes a novel immune network model with the main goals of clustering and filtering unlabelled numerical data sets. It is not our concern to reproduce with confidence any immune phenomenon, but to show that immune concepts can be used to develop powerful computational tools for data processing. As important results of our model, the network evolved will be capable of reducing redundancy, describing data structure, including the shape of the clusters. The network will be implemented in association with a statistical inference technique, and its performance will be illustrated using two benchmark problems. The paper is concluded with a trade-off between the proposed network and artificial neural networks used to perform unsupervised learning.
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