Title :
A similarity-based soft clustering algorithm for documents
Author :
Lin, King-Ip ; Kondadadi, Ravikumar
Author_Institution :
Dept. of Math. Sci., Memphis Univ., Memphis, TN, USA
Abstract :
Document clustering is an important tool for applications such as Web search engines. Clustering documents enables the user to have a good overall view of the information contained in the documents that he has. However, existing algorithms suffer from various aspects, hard clustering algorithms (where each document belongs to exactly one cluster) cannot detect the multiple themes of a document, while soft clustering algorithms (where each document can belong to multiple clusters) are usually inefficient. We propose SISC (similarity-based soft clustering), an efficient soft clustering algorithm based on a given similarity measure. SISC requires only a similarity measure for clustering and uses randomization to help make the clustering efficient. Comparison with existing hard clustering algorithms like K-means and its variants shows that SISC is both effective and efficient.
Keywords :
data mining; document handling; pattern clustering; very large databases; K-means clustering; SISC; Web search engines; data mining; document clustering; randomization; similarity measure; similarity-based soft clustering; very large databases; Animals; Clustering algorithms; Data mining; Keyword search; Parameter estimation; Search engines; Web pages; Web search; Web sites;
Conference_Titel :
Database Systems for Advanced Applications, 2001. Proceedings. Seventh International Conference on
Conference_Location :
Hong Kong, China
Print_ISBN :
0-7695-0996-7
DOI :
10.1109/DASFAA.2001.916362