Title
Improve text classification accuracy based on classifier fusion methods
Abstract
Naive-Bayes and k-NN classifiers are two machine learning approaches for text classification. Rocchio is the classic method for text classification in information retrieval. Based on these three approaches and using classifier fusion methods, we propose a novel approach in text classification. Our approach is a supervised method, meaning that the list of categories should be defined and a set of training data should be provided for training the system. In this approach, documents are represented as vectors where each component is associated with a particular word. We proposed voting methods and OWA operator and decision template method for combining classifiers. Experimental results show that these methods decrese the classification error 15 percent as measured on 2000 training data from 20 newsgroups dataset.
Year
DOI
Venue
2007
10.1109/ICIF.2007.4408196
Quebec, Que.
Keywords
Field
DocType
Bayes methods,classification,decision theory,information retrieval,learning (artificial intelligence),sensor fusion,text analysis,OWA operator,Rocchio algorithm,decision template method,information retrieval,k-NN classifier,machine learning,naive-Bayes classifier,text classification,voting method,Classifier Fusion,Decision Template,K-NN,Naïve-Bayes,OWA,Rocchio,TFIDF,Text Classification,Voting
Text mining,One-class classification,Naive Bayes classifier,tf–idf,Pattern recognition,Computer science,Sensor fusion,Artificial intelligence,Decision theory,Rocchio algorithm,Linear classifier,Machine learning
Conference
ISBN
Citations 
PageRank 
978-0-662-45804-3
12
0.56
References 
Authors
5
3
Name
Order
Citations
PageRank
Danesh, A.1120.56
B. Moshiri2577.85
Omid Fatemi37815.71