首页> 外文会议>IFSA(International Fuzzy Systems Association); 2007; >Fuzzy C-Means, Gustafson-Kessel FCM, and Kernel-Based FCM: A Comparative Study
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Fuzzy C-Means, Gustafson-Kessel FCM, and Kernel-Based FCM: A Comparative Study

机译:模糊C均值,Gustafson-Kessel FCM和基于内核的FCM:比较研究

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This paper is concerned with a comparative study of the performance of fuzzy clustering algorithms Fuzzy C-Means (FCM), Gustafson-Kessel FCM (GK-FCM) and two variations of kernel-based FCM. One kernel-based FCM (KFCM) retains prototypes in the input space while the other (MKFCM) implicitly retains prototypes in the feature space. The two performance criteria used in the evaluation of the clustering algorithm deal with produced classification rate and reconstruction error. We experimentally demonstrate that the kernel-based FCM algorithms do not produce significant improvement over standard FCM for most data sets under investigation It is shown that the kernel-based FCM algorithms appear to be highly sensitive to the selection of the values of the kernel parameters.
机译:本文涉及对模糊聚类算法Fuzzy C-Means(FCM),Gustafson-Kessel FCM(GK-FCM)和基于内核的FCM的两个变体的性能的比较研究。一个基于内核的FCM(KFCM)将原型保留在输入空间中,而另一个(MKFCM)隐式将原型保留在特征空间中。聚类算法评估中使用的两个性能标准涉及产生的分类率和重构误差。我们通过实验证明,对于大多数正在研究的数据集,基于内核的FCM算法不会比标准FCM产生显着改善。这表明基于内核的FCM算法似乎对选择内核参数的值高度敏感。

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