A Hierarchical K-NN Classifier for Textual Data

A Hierarchical K-NN Classifier for Textual Data

Rehab Duwairi1 and Rania Al-Zubaidi2‎
‎1Jordan University of Science and Technology, Jordan
‎2Jordan University of Science and Technology, Jordan


Abstract: This paper presents a classifier that is based on a modified version of the well known K-Nearest Neighbors classifier (K-NN).  ‎The original K-NN classifier was adjusted to work with category representatives rather than training documents. Each ‎category was represented by one document that was constructed by consulting all of its training documents and then applying ‎feature selection so that only important terms remain. By this, when classifying a new document, it is required to be compared ‎with category representatives and these are usually substantially fewer than training documents. This modified K-NN was ‎experimented with in a hierarchical setting, i.e., when categories are represented as a hierarchy. Also, a new document ‎similarity measure was proposed. It focuses on co-occurring or matching terms between a document and a category when ‎calculating the similarity. This measure produces classification accuracy compared to the one obtained if the cosine, Jaccard ‎or Dice similarity measures were used; yet it requires a much less time. The TrechTC-100 hierarchical dataset was used to ‎evaluate the proposed classifier.‎

Keywords: Text categorization, hierarchical classifiers, K-NN, similarity measures, category representatives.‎
 

Received October 23, 2008; accepted August 3, 2009‎

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