Title :
An improved density-sensitive semi-supervised clustering algorithm
Author :
Yulong Wu ; Pingbo Yuan ; Nenghai Yu
Author_Institution :
MOE-MS Key Laboratory of Multimedia Calculation and Communication, University of Science and Technology of China, Hefei, 230027, China
Abstract :
This paper presents an improved density-sensitive distance measurement, which can effectively enlarge the distances among data points in different high density regions and shorten the distances among data points in the same high density region. Furthermore, a semi-supervised learning algorithm named improved density-sensitive semi-supervised clustering (IDS-SC) algorithm is introduced based on this distance measurement. The results demonstrate the superiority of IDS-SC in the application of Coral image set.
Keywords :
Clustering Assumption; Density-Sensitive; Semi-supervised Clustering;
Conference_Titel :
Visual Information Engineering, 2008. VIE 2008. 5th International Conference on
Print_ISBN :
978-0-86341-914-0