Title :
Evidential seed-based semi-supervised clustering
Author :
Antoine, Violaine ; Labroche, Nicolas ; Viet-Vu Vu
Author_Institution :
LIMOS, Blaise Pascal Univ., Clermont-Ferrand, France
Abstract :
Evidential clustering algorithms produce credal partitions that enhance the concepts of hard, fuzzy or possibilistic partitions to represent all assignments ranging from complete ignorance to total certainty. This paper introduces the first semi-supervised extension of the evidential c-means clustering algorithm that can benefit from the introduction of a small set of labeled data (or seeds). Experiments conducted on real datasets show that the introduction of seeds can lead to a significant increase in clustering accuracy compared to a traditional evidential clustering algorithm as well as a decrease in the number of iterations to convergence.
Keywords :
fuzzy set theory; pattern clustering; possibility theory; credal partitions; evidential c-means clustering algorithm; evidential seed-based semisupervised clustering; fuzzy partition; hard partition; labeled data; possibilistic partition; Accuracy; Clustering algorithms; Electronic countermeasures; Ionosphere; Iris; Linear programming; Partitioning algorithms;
Conference_Titel :
Soft Computing and Intelligent Systems (SCIS), 2014 Joint 7th International Conference on and Advanced Intelligent Systems (ISIS), 15th International Symposium on
DOI :
10.1109/SCIS-ISIS.2014.7044676