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基于融合欧氏距离与Kendall Tau距离度量的谱聚类算法(英文) 被引量:5

Spectral clustering with mixed Euclidean and Kendall Tau metrics
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摘要 大多数现存的谱聚类方法均使用传统距离度量计算样本之间的相似性,这样仅仅考虑了两两样本之间的相似性而忽略了周围的近邻信息,更没有顾及数据的全局性分布结构.因此,本文提出一种新的融合欧氏距离和Kendall Tau距离的谱聚类方法.该方法通过融合两两样本之间的直接距离以及其周围的近邻信息,充分利用了不同的相似性度量可以从不同角度抓取数据之间结构信息的优势,更加全面地反映数据的底层结构信息.通过与传统聚类算法在UCI标准数据集上的实验结果作比较,验证了本文的方法可以显著提高聚类效果. Spectral methods have been largely utilized in clustering problems.Most of existing methods ignore the useful information from neighborhoods and only employ conventional metric to evaluate the similarity between pairs of samples.Accordingly,this paper proposes a novel spectral clustering method with mixed Euclidean and Kendall Tau metrics(SCMEK),by which similarities between pairs of samples and their neighbors are both considered for learning theunderlying structure of the datasets.Specifically,the new similarity metric is a fusion algorithm,which outputs enhanced metric by combining multiple metrics(i.e.,Euclidean metric and Kendall Tau metric).Moreover,the proposed method utilizes the non-linear fusion of different similarity metrics to tackle the dataset from different aspects and thus can effectively utilize different information from the data structure.Experimental study on various datasets demonstrates that the proposed approach achieves superior performance to state-of-the-art methods.
作者 光俊叶 邵伟 孙亮 张道强 GUANG Jun-ye;SHAO Wei;SUN Liang;ZHANG Dao-qiang(Department of Computer Science and Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing Jiangsu 211106, China)
出处 《控制理论与应用》 EI CAS CSCD 北大核心 2017年第6期783-789,共7页 Control Theory & Applications
基金 Supported by National Natural Science Foundation of China(61422204,61473149) Jiangsu Natural Science Foundation for Young Scholar(BK2013-0034) Foundation of Graduate Innovation Center in NUAA(KFJJ20151605)
关键词 KendallTau距离 距离度量 相似性融合 谱聚类 Kendall Tau distance distance metric similarity fusion spectral clustering
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