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Khalil M El Hindi

Professor

Faculty memeber

علوم الحاسب والمعلومات
Room 2189, Building 31

Building an Ensemble of Fine-Tuned Naive Bayesian Classifiers for Text Classification

Khalil, El Hindi, . 2018

Text classification is one domain in which the naive Bayesian (NB) learning algorithm performs remarkably well. However, making further improvement in performance using ensemble-building techniques proved to be a challenge because NB is a stable algorithm. This work shows that, while an ensemble of NB classifiers achieves little or no improvement in terms of classification accuracy, an ensemble of fine-tuned NB classifiers can achieve a remarkable improvement in accuracy. We propose a fine-tuning algorithm for text classification that is both more accurate and less stable than the NB algorithm and the fine-tuning NB (FTNB) algorithm. This improvement makes it more suitable than the FTNB algorithm for building ensembles of classifiers using bagging. Our empirical experiments, using 16-benchmark text-classification data sets, show significant improvement for most data sets. View Full-Text

Volume Number
20
Issue Number
11
Magazine \ Newspaper
Entropy
more of publication
publications

The combination of collaborative deep learning and Cyber-Physical Systems (CPSs) has the potential to improve decision-making, adaptability, and efficiency in dynamic and distributed environments…

by Alya Alshammari, and Khalil El Hindi
Published in:
Applied Sciences
publications

Naïve Bayes (NB) classification performance degrades if the conditional independence assumption is not satisfied or if the conditional probability estimate is not realistic due to the attributes…

by Fahad S. Alenazi, Khalil El Hindi, and Basil AsSadhan