Title :
A Threshold Free Clustering Algorithm for Robust Unsupervised Classification
Author :
Temel, Turgay ; Aydin, Nizamettin
Author_Institution :
Fatih Univ., Istanbul
Abstract :
A new information-theoretic, unsupervised, subtractive clustering algorithm is proposed. The algorithm eliminates threshold constraint to detect possible cluster members. Cluster centers are formed with minimum entropy. Instead of using a fixed- threshold, a decision region is formed with the use of maximum mutual information. Cluster members are chosen with a relative-cost assigned in partitions of data set. The algorithm yields more reliably distributed cluster numbers in statistical sense, hence reducing further computation for validation, which is justified for a set of synthetic data.
Keywords :
minimum entropy methods; pattern clustering; statistical analysis; data set; information-theory; maximum mutual information; minimum entropy; robust unsupervised classification; subtractive clustering algorithm; threshold free clustering algorithm; Clustering algorithms; Data mining; Entropy; Histograms; Kernel; Merging; Mutual information; Partitioning algorithms; Robustness; Statistics;
Conference_Titel :
Bio-inspired, Learning, and Intelligent Systems for Security, 2007. BLISS 2007. ECSIS Symposium on
Conference_Location :
Edinburgh
Print_ISBN :
0-7695-2919-4
DOI :
10.1109/BLISS.2007.26