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Novel Hybrid Clustering Algorithm Incorporating Artificial Immunity into Fuzzy Kernel Clustering for Pattern Recognition

机译:一种将人工免疫纳入模糊核聚类的模式识别新混合聚类算法

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The application of artificial immunity and fuzzy kernel clustering in data classification is studied, and a new hybrid clustering algorithm incorporating artificial immunity into fuzzy kernel clustering for pattern recognition is proposed in this paper. The algorithm, by combining kernel-based fuzzy clustering with artificial immune evolution algorithm, which learns from the mechanism of immunocyte clone, memory and affinity maturation in natural immune system, operates on antibody with clone, hyper-mutation and restraint in each generation. The algorithm can quickly obtain global optima, and perfectly solve the flaws of the fuzzy c-means and kernel clustering algorithm, which are sensitive to initialization and easy to involve local optima. Our experiments on IRIS data as well as compressor fault data demonstrate the feasibility and effectiveness of the new algorithm.
机译:研究了人工免疫和模糊核聚类在数据分类中的应用,提出了一种将人工免疫融入模糊核聚类的模式识别新的混合聚类算法。该算法通过将基于核的模糊聚类与人工免疫进化算法相结合,从自然免疫系统中免疫细胞克隆,记忆和亲和力成熟的机制中汲取经验,对每一代具有克隆,超突变和约束的抗体进行操作。该算法可以快速获得全局最优解,完美地解决了模糊c均值算法和核聚类算法的缺陷,它们对初始化敏感,易于涉及局部最优。我们对IRIS数据和压缩机故障数据的实验证明了该新算法的可行性和有效性。

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