Article ID Journal Published Year Pages File Type
10323339 Expert Systems with Applications 2005 5 Pages PDF
Abstract
Text categorization or classification is the automated assigning of text documents to pre-defined classes based on their contents. Many of classification algorithms usually assume that the training examples are evenly distributed among different classes. However, unbalanced data sets often appear in many practical applications. In order to deal with uneven text sets, we propose the neighbor-weighted K-nearest neighbor algorithm, i.e. NWKNN. The experimental results indicate that our algorithm NWKNN achieves significant classification performance improvement on imbalanced corpora.
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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