Title of article :
Mining fuzzy frequent itemsets for hierarchical document clustering
Author/Authors :
Chun-Ling Chen، نويسنده , , Frank S.C. Tseng، نويسنده , , Tyne Liang، نويسنده ,
Issue Information :
دوماهنامه با شماره پیاپی سال 2010
Pages :
19
From page :
193
To page :
211
Abstract :
As text documents are explosively increasing in the Internet, the process of hierarchical document clustering has been proven to be useful for grouping similar documents for versatile applications. However, most document clustering methods still suffer from challenges in dealing with the problems of high dimensionality, scalability, accuracy, and meaningful cluster labels. In this paper, we will present an effective Fuzzy Frequent Itemset-Based Hierarchical Clustering (F2IHC) approach, which uses fuzzy association rule mining algorithm to improve the clustering accuracy of Frequent Itemset-Based Hierarchical Clustering (FIHC) method. In our approach, the key terms will be extracted from the document set, and each document is pre-processed into the designated representation for the following mining process. Then, a fuzzy association rule mining algorithm for text is employed to discover a set of highly-related fuzzy frequent itemsets, which contain key terms to be regarded as the labels of the candidate clusters. Finally, these documents will be clustered into a hierarchical cluster tree by referring to these candidate clusters. We have conducted experiments to evaluate the performance based on Classic4, Hitech, Re0, Reuters, and Wap datasets. The experimental results show that our approach not only absolutely retains the merits of FIHC, but also improves the accuracy quality of FIHC.
Keywords :
Hierarchical document clustering , Text Mining , Fuzzy association rule mining , Frequent itemsets
Journal title :
Information Processing and Management
Serial Year :
2010
Journal title :
Information Processing and Management
Record number :
1229021
Link To Document :
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