posted on 2009-10-08, 10:31authored byDaniela Xhemali, Chris J. Hinde, Roger Stone
Web classification has been attempted through many different
technologies. In this study we concentrate on the comparison of
Neural Networks (NN), Naïve Bayes (NB) and Decision Tree
(DT) classifiers for the automatic analysis and classification of
attribute data from training course web pages. We introduce an
enhanced NB classifier and run the same data sample through the
DT and NN classifiers to determine the success rate of our
classifier in the training courses domain. This research shows
that our enhanced NB classifier not only outperforms the
traditional NB classifier, but also performs similarly as good, if
not better, than some more popular, rival techniques. This paper
also shows that, overall, our NB classifier is the best choice for
the training courses domain, achieving an impressive F-Measure
value of over 97%, despite it being trained with fewer samples
than any of the classification systems we have encountered.
History
School
Science
Department
Computer Science
Citation
XHEMALI, D., HINDE, C.J. and STONE, R.G., 2009. Naïve Bayes vs. Decision Trees vs. Neural Networks in the classification of training web pages. International Journal of Computer Science Issues, 4 (1), pp. 16-23.