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首页> 外文期刊>New Generation Computing >Hybridization Schemes of the Fuzzy Dendritic Cell Immune Binary Classifier based on Different Fuzzy Clustering Techniques
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Hybridization Schemes of the Fuzzy Dendritic Cell Immune Binary Classifier based on Different Fuzzy Clustering Techniques

机译:基于不同模糊聚类技术的模糊树突状细胞免疫二元分类器杂交方案

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摘要

The Dendritic Cell Algorithm (DCA) is an immune-inspired algorithm based on the behavior of natural dendritic cells. The DCA, as a binary classifier, classifies in a crisp manner each data item as either normal or anomalous. However, it was shown that DCA is sensitive to the input class data order. This problem was solved by the development of the fuzzy dendritic cell algorithm. The performance of the latter algorithm relies on its parameters tuning as this process is based on the use of a fuzzy clustering technique. We, thus, believe that the choice of the right fuzzy clustering technique is crucial for the system. In this paper, we try to review the fuzzy version of DCA and to investigate its performance when hybridized with different fuzzy clustering techniques. The aim of this hybridization is to select the most appropriate fuzzy clustering approach in order to generate an overall automated robust fuzzy DCA classifier.
机译:树突状细胞算法(DCA)是一种基于自然树突状细胞行为的免疫启发式算法。 DCA作为二进制分类器,以一种清晰的方式将每个数据项分类为正常或异常。但是,结果表明DCA对输入类数据顺序很敏感。模糊树突状细胞算法的发展解决了这个问题。后一种算法的性能取决于其参数调整,因为此过程基于模糊聚类技术的使用。因此,我们认为正确的模糊聚类技术的选择对于系统至关重要。在本文中,我们尝试回顾DCA的模糊版本,并研究其与不同的模糊聚类技术混合时的性能。这种混合的目的是选择最合适的模糊聚类方法,以生成整体自动化的鲁棒模糊DCA分类器。

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