A weight-incorporated similarity-based clustering ensemble method

ICNSC(2014)

引用 14|浏览23
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摘要
Clustering analysis is an important tool of data mining. The study on efficient clustering has great significance, especially in improving a clustering algorithm's adaptability and usefulness. Clustering ensemble (CE) integrates several clustering algorithms such that the clustering results can be effectively improved. This work investigates similarity-based methods and proposes a new method called weight- incorporated similarity-based clustering ensemble (WSCE). Six classic data sets are used to test single clustering algorithms, similarity-based one, and the proposed one via simulation. The results prove the validity and performance advantage of the proposed method.
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关键词
pattern clustering,clustering ensemble,similarity-based methods,clustering algorithm,learning (artificial intelligence),clustering analysis,similarity-based ensemble,data clustering,data mining,weight-incorporated,wsce,weight-incorporated similarity-based clustering ensemble method,clustering algorithms,learning artificial intelligence,lead,algorithm design and analysis,iris,image segmentation
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