Author
Listed:
- Hassan Najadat
(Computer Information Systems Department, Jordan University of Science and Technology, P.O. Box 3030, Irbid 22110, Jordan)
- Rasha Obeidat
(Computer Science Department, Jordan University of Science and Technology, Jordan)
- Ismail Hmeidi
(Computer Information Systems Department, Jordan University of Science and Technology, P.O. Box 3030, Irbid 22110, Jordan)
Abstract
This paper introduces three new text classification methods: Clustering-Based Generalised Instances Set (CB-GIS), Multilevel Clustering-Based Generalised Instances Set (MLC_GIS) and Multilevel Clustering-Based,kNearest Neighbours (MLC-kNN). These new methods aim to unify the strengths and overcome the drawbacks of the three similarity-based text classification methods, namely,kNN, centroid-based and GIS. The new methods utilise a clustering technique called spherical K-means to represent each class by a representative set of generalised instances to be used later in the classification. The CB-GIS method applies a flat clustering method while MLC-GIS and MLC-kNN apply multilevel clustering. Extensive experiments have been conducted to evaluate the new methods and compare them withkNN, centroid-based and GIS classifiers on the Reuters-21578(10) benchmark dataset. The evaluation has been performed in terms of the classification performance and the classification efficiency. The experimental results show that the top-performing classification method is the MLC-kNN classifier, followed by the MLC-GIS and CB-GIS classifiers. According to the best micro-averaged F1 scores, the new methods (CB-GIS, MLC-CIS, MLC-kNN) have improvements of 4.48%, 4.65% and 4.76% overkNN, 1.84%, 1.92% and 2.12% over the centroid-based and 5.26%, 5.34% and 5.45% over GIS respectively. With respect to the best macro-averaged F1 scores, the new methods (CB-GIS, MLC-CIS, MLC-kNN) have improvements of 10.29%, 10.19% and 10.45% overkNN, respectively, 0.1%, 0.03% and 0.29% over the centroid-based and 3.75%, 3.68% and 3.94% over GIS respectively.
Suggested Citation
Hassan Najadat & Rasha Obeidat & Ismail Hmeidi, 2011.
"Clustering Generalised Instances Set Approaches for Text Classification,"
Journal of Information & Knowledge Management (JIKM), World Scientific Publishing Co. Pte. Ltd., vol. 10(01), pages 91-107.
Handle:
RePEc:wsi:jikmxx:v:10:y:2011:i:01:n:s0219649211002857
DOI: 10.1142/S0219649211002857
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