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PEBL: WEB PAGE CLASSIFICATION WITHOUT NEGATIVE EXAMPLES SCIE SCOPUS

Title
PEBL: WEB PAGE CLASSIFICATION WITHOUT NEGATIVE EXAMPLES
Authors
Yu, HJHan, JWChang, KCC
Date Issued
2004-01
Publisher
IEEE COMPUTER SOC
Abstract
Web page classification is one of the essential techniques for Web mining because classifying Web pages of an interesting class is often the first step of mining the Web. However, constructing a classifier for an interesting class requires laborious preprocessing such as collecting positive and negative training examples. For instance, in order to construct a "homepage" classifier, one needs to collect a sample of homepages (positive examples) and a sample of nonhomepages (negative examples). In particular, collecting negative training examples requires arduous work and caution to avoid bias. This paper presents a framework, called Positive Example Based Learning (PEBL), for Web page classification which eliminates the need for manually collecting negative training examples in preprocessing. The PEBL framework applies an algorithm, called Mapping-Convergence (M-C), to achieve high classification accuracy (with positive and unlabeled data) as high as that of a traditional SVM (with positive and negative data). M-C runs in two stages: the mapping stage and convergence stage. In the mapping stage, the algorithm uses a weak classifier that draws an initial approximation of "strong" negative data. Based on the initial approximation, the convergence stage iteratively runs an internal classifier (e.g., SVM) which maximizes margins to progressively improve the approximation of negative data. Thus, the class boundary eventually converges to the true boundary of the positive class in the feature space. We present the M-C algorithm with supporting theoretical and experimental justifications. Our experiments show that, given the same set of positive examples, the M-C algorithm outperforms one-class SVMs, and it is almost as accurate as the traditional SVMs.
Keywords
Web page classification; Web mining; document classification; single-class classification; Mapping-Convergence (M-C) algorithm; SVM (Support Vector Machine); EM
URI
https://oasis.postech.ac.kr/handle/2014.oak/28744
DOI
10.1109/TKDE.2004.1264823
ISSN
1041-4347
Article Type
Article
Citation
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, vol. 16, no. 1, page. 70 - 81, 2004-01
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유환조YU, HWANJO
Dept of Computer Science & Enginrg
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