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What is Roc-SVM

Handbook of Research on Text and Web Mining Technologies
In its first step, Roc-SVM performs negative data extraction from the unlabeled set U using the Rocchio method. In its second step, it selects a good classifier from a set of classifiers built by SVM, which is different from PEBL. Roc-SVM is robust and performs well consistently under a variety of conditions.
Published in Chapter:
Partially Supervised Text Categorization
Xiao-Li Li (Institute for Infocomm Research, A* STAR, Singapore)
Copyright: © 2009 |Pages: 21
DOI: 10.4018/978-1-59904-990-8.ch005
Abstract
In traditional text categorization, a classifier is built using labeled training documents from a set of predefined classes. This chapter studies a different problem: partially supervised text categorization. Given a set P of positive documents of a particular class and a set U of unlabeled documents (which contains both hidden positive and hidden negative documents), we build a classifier using P and U to classify the data in U as well as future test data. The key feature of this problem is that there is no labeled negative document, which makes traditional text classification techniques inapplicable. In this chapter, we introduce the main techniques S-EM, PEBL, Roc-SVM and A-EM, to solve the partially supervised problem. In many application domains, partially supervised text categorization is preferred since it saves on the labor-intensive effort of manual labeling of negative documents.
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