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Reliable Negative Extracting Based on kNN for Learning from Positive and Unlabeled Examples
Journal Title Journal of Computers
Journal Abbreviation jcp
Publisher Group Academy Publisher
Website http://ojs.academypublisher.com
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Title Reliable Negative Extracting Based on kNN for Learning from Positive and Unlabeled Examples
Authors Zuo, Wanli; Zhang, Bangzuo
Abstract Many real-world classification applications fall into the class of positive and unlabeled learning problems. The existing techniques almost all are based on the two-step strategy. This paper proposes a new reliable negative extracting algorithm for step 1. We adopt kNN algorithm to rank the similarity of unlabeled examples from the k nearest positive examples, and set a threshold to label some unlabeled examples that lower than it as the reliable negative examples rather than the common method to label positive examples. In step 2, we use iterative SVM technique to refine the finally classifier. Our proposed method is simplicity and efficiency and on some level independent to k. Experiments on the popular Reuter21578 collection show the effectiveness of our proposed technique.
Publisher ACADEMY PUBLISHER
Date 2009-01-01
Source Journal of Computers Vol 4, No 1 (2009): Special Issue: Recent Advances in Information Technology and Security - Track o
Rights Copyright © ACADEMY PUBLISHER - All Rights Reserved.To request permission, please check out URL: http://www.academypublisher.com/copyrightpermission.html.

 

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