DocumentCode
3107926
Title
An Effective Hybrid Classifier Based on Rough Sets and Neural Networks
Author
Rujiang Bai ; Xiaoyue Wang
Author_Institution
Shandong Univ. of Technol. Library, Zibo
fYear
2006
fDate
Dec. 2006
Firstpage
57
Lastpage
62
Abstract
Due to the exponential growth of documents on the Internet and the emergent need to organize them, the automated categorization of documents into predefined labels has received an ever-increased attention in the recent years. This paper describes a method developed for the automatic clustering of documents by using a hybrid classifier based on rough sets and neural networks, which we called as Rough-Ann. First, the documents are denoted by vector space model and the feature vectors are reduced by using rough sets. Then using those feature vectors we reduced that are training set for artificial neural network and clustering the documents. The experimental results show that the algorithm Rough-Ann is effective for the documents classification, and has the better performance in classification precision, stability and fault-tolerance comparing with the traditional classification methods, Bayesian classifiers SVM and kNN, especially for the complex classification problems with many feature vectors
Keywords
neural nets; pattern classification; rough set theory; Bayesian classifiers; Internet; artificial neural network; automatic clustering; complex classification problems; documents automated categorization; documents classification; hybrid classifier; rough sets; support vector machines; vector space model; Artificial neural networks; Bayesian methods; Clustering algorithms; Fault tolerance; Internet; Neural networks; Rough sets; Stability; Support vector machine classification; Support vector machines;
fLanguage
English
Publisher
ieee
Conference_Titel
Web Intelligence and Intelligent Agent Technology Workshops, 2006. WI-IAT 2006 Workshops. 2006 IEEE/WIC/ACM International Conference on
Conference_Location
Hong Kong
Print_ISBN
0-7695-2749-3
Type
conf
DOI
10.1109/WI-IATW.2006.36
Filename
4053204
Link To Document