Title of article :
Minkowski metric, feature weighting and anomalous cluster initializing in K-Means clustering
Author/Authors :
Renato Cordeiro de Amorim، نويسنده , , Renato and Mirkin، نويسنده , , Boris، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
15
From page :
1061
To page :
1075
Abstract :
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against noisy features, using feature weights in the criterion. The Weighted K-Means method by Huang et al. (2008, 2004, 2005) [5–7] is extended to the corresponding Minkowski metric for measuring distances. Under Minkowski metric the feature weights become intuitively appealing feature rescaling factors in a conventional K-Means criterion. To see how this can be used in addressing another issue of K-Means, the initial setting, a method to initialize K-Means with anomalous clusters is adapted. The Minkowski metric based method is experimentally validated on datasets from the UCI Machine Learning Repository and generated sets of Gaussian clusters, both as they are and with additional uniform random noise features, and appears to be competitive in comparison with other K-Means based feature weighting algorithms.
Keywords :
k-means , Feature weights , Noise features , Anomalous cluster , Minkowski metric
Journal title :
PATTERN RECOGNITION
Serial Year :
2012
Journal title :
PATTERN RECOGNITION
Record number :
1734369
Link To Document :
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