Making large-scale support vector machine learning practical
Advances in kernel methods
A Tutorial on Support Vector Machines for Pattern Recognition
Data Mining and Knowledge Discovery
An empirical comparison of supervised learning algorithms
ICML '06 Proceedings of the 23rd international conference on Machine learning
Hierarchical classification: combining Bayes with SVM
ICML '06 Proceedings of the 23rd international conference on Machine learning
Introduction to Information Retrieval
Introduction to Information Retrieval
Identifying training sets for personalized article retrieval system
Proceedings of the 49th Annual Southeast Regional Conference
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For researchers interested in reading articles concerning a specific topic, the current document search techniques, based primarily on keyword matching, are insufficient. They tend to return too many "hits", most of which are not truly relevant. An individualized text filtering system that can select/recommend useful articles would be a tremendous time-saver for researchers, especially in the field of bioinformatics, in which numerous articles are published daily. Machine learning tools such as text classification may be the answer to this need. This paper describes some preliminary work on developing such a text filtering system. Support Vector Machine is used to classify articles from Journal of Bacteriology to determine whether an article addresses issues related to "gene function". Preliminary results, problems, and difficulties encountered are discussed.