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Feature Weighted Kernel Clustering with Application to Medical Data Analysis

机译:具有应用于医疗数据分析的加权内核聚类

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Clustering technique is an effective tool for medical data analysis as it can work for disease prediction, diagnosis record mining, medical image segmentation, and so on. This paper studies the kernel-based clustering method which can conduct nonlinear partition on input patterns and addresses two challenging issues in unsupervised learning environment: feature relevance estimate and cluster number selection. Specifically, a kernel-based competitive learning paradigm is presented for nonlinear clustering analysis. To distinguish the relevance of different features, a weight variable is associated with each feature to quantify the feature's contribution to the whole cluster structure. Subsequently, the feature weights and cluster assignment are updated alternately during the learning process so that the relevance of features and cluster membership can be jointly optimized. Moreover, to solve the problem of cluster number selection, the cooperation mechanism is further introduced into the presented learning framework and a new kernel clustering algorithm which can automatically select the most appropriate cluster number is educed. The performance of proposed method is demonstrated by the experiments on different medical data sets.
机译:聚类技术是医疗数据分析的有效工具,因为它可以用于疾病预测,诊断记录挖掘,医学图像分割等。本文研究了基于内核的聚类方法,可以对输入模式进行非线性分区,并在无监督的学习环境中解决两个具有挑战性的问题:特征相关性估计和群集编号选择。具体地,呈现基于内核的竞争学习范例,用于非线性聚类分析。为了区分不同特征的相关性,权重变量与每个特征相关联,以量化特征对整个集群结构的贡献。随后,在学习过程中交替地更新特征权重和群集分配,以便可以共同优化特征和群集成员资格的相关性。此外,为了解决群集号选择的问题,进一步将合作机制引入所呈现的学习框架和新的内核聚类算法,它可以自动选择最合适的群集编号。通过对不同医疗数据集的实验来证明所提出的方法的性能。

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