Title of article :
Clustering ellipses for anomaly detection
Author/Authors :
Moshtaghi، نويسنده , , Masud and Havens، نويسنده , , Timothy C. and Bezdek، نويسنده , , James C. and Park، نويسنده , , Laurence and Leckie، نويسنده , , Christopher and Rajasegarar، نويسنده , , Sutharshan and Keller، نويسنده , , James M. and Palaniswami، نويسنده , , Marimuthu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
15
From page :
55
To page :
69
Abstract :
Comparing, clustering and merging ellipsoids are problems that arise in various applications, e.g., anomaly detection in wireless sensor networks and motif-based patterned fabrics. We develop a theory underlying three measures of similarity that can be used to find groups of similar ellipsoids in p-space. Clusters of ellipsoids are suggested by dark blocks along the diagonal of a reordered dissimilarity image (RDI). The RDI is built with the recursive iVAT algorithm using any of the three (dis) similarity measures as input and performs two functions: (i) it is used to visually assess and estimate the number of possible clusters in the data; and (ii) it offers a means for comparing the three similarity measures. Finally, we apply the single linkage and CLODD clustering algorithms to three two-dimensional data sets using each of the three dissimilarity matrices as input. Two data sets are synthetic, and the third is a set of real WSN data that has one known second order node anomaly. We conclude that focal distance is the best measure of elliptical similarity, iVAT images are a reliable basis for estimating cluster structures in sets of ellipsoids, and single linkage can successfully extract the indicated clusters.
Keywords :
Cluster analysis , Elliptical anomalies in wireless sensor networks , Reordered dissimilarity images , Similarity of ellipsoids , Single linkage clustering , Visual assessment
Journal title :
PATTERN RECOGNITION
Serial Year :
2011
Journal title :
PATTERN RECOGNITION
Record number :
1733875
Link To Document :
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