Research Article
BibTex RIS Cite
Year 2017, Volume: 5 Issue: 1, 274 - 277, 30.06.2017
https://doi.org/10.17261/Pressacademia.2017.600

Abstract

References

  • Ababneh, J., Almomani, O., Hadi, W., El-Omari, N.K.T., and Al-Ibrahim, A., "Vector Space Models to Classify Arabic Text," International Journal of Computer Trends and Technology (IJCTT), vol 7, 2014
  • Agirre E., Lacalle O., and Soroa A., “Knowledge-Based WSD on Specific Domains: Performing Better than Generic Supervised WSD,” in Proceedings of the 21st International Joint Conference on Artificial Intelligence, San Francisco, USA, pp. 1501-1506, 2009.
  • Alsaleem, S., " Automated Arabic Text Categorization Using SVM and NB," International Arab Journal of e-Technology, Vol. 2, 2011
  • Al-Harbi, S., Almuhareb, A., Al-Thubaity, A., Khorsheed, M. S. and Al-Rajeh, A. "Automatic Arabic Text Classification," Proceedings of The 9th International Conference on the Statistical Analysis of Textual Data, Lyon-France, 2008
  • Al-Kabi, M. N., & Al-Sinjilawi, S. I. (2007). a Comparative Study of the Efficiency of Different Measures To Classify Arabic Text. University of Sharjah Journal of Pure & Applied Sciences, 4(2), 13–26.
  • Bawaneh, M.J., Alkoffash, M.S., and Al Rabea A.I."ArabicText Classification using K-NN and Naive Bayes". Journal of Computer Science, vol. 4, 2008. Duwairi, R. "Arabic Text Categorization," The International Arab Journal of Information Technology, Vol. 4, 2007.
  • El-halees, A. (2011). Arabic Opinion Mining Using Combined Classification Approach. Proceeding The International Arab Conference On Information Technology, Azrqa, Jordan.
  • Gharib, T. F., Habib, M. B., & Fayed, Z. T. (2009). Arabic Text Classification Using Support Vector Machines. International Journal of Computers and Their Applications, 16(4), 192–199. Retrieved from http://purl.utwente.nl/publications/75679
  • Hanandeh E., Mamoun S.The Automated VSMs to Categorize Arabic Text Data Sets,INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY,VOL 13, NO 1 (2014)MARCH-2014.PP.4047-4081
  • Khorsheed, M. S., & Al-Thubaity, A. O. (2013). Comparative evaluation of text classification techniques using a large diverse Arabic dataset. Language Resources and Evaluation, 47(2), 513–538. http://doi.org/10.1007/s10579-013-9221-8
  • Khreisat, L. "A machine learning approach for Arabic text classification using N-gram frequency statistics," Journal of Informatics, Volume 3, 2009.
  • Karima, A, Zakaria, E and Yamina, T.G. "Arabic Text Categorization: A Comparative Study of different Representation Model, " Journal of Theoretical and Applied Information Technology, Vol. 38, 2005.
  • Mesleh, A.M.A. Support Vector Machine text Classifier for Arabic Articles: Ant Colony Optimization-based Feature Subset Selection., The Arab Academy for banking and financial Science, PHD. Thesis, 2008.
  • Syiam. M. M., Z. T. Fayed & M. B. Habib. An intelligent system for Arabic text categorization. IJICIS, Vol.6, No. 1 JANUARY 2006.
  • Wahbeh, A. H., Al-Radaideh, Q. A., Al-Kabi, , M. N., & Al-Shawakfa, E. M. (2012). A Comparison Study between Data Mining Tools over some Classification Methods. International Journal of Advanced Computer Science and Applications, Special Issue on Artificial Intelligence, , 2(8), 19–26

OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY

Year 2017, Volume: 5 Issue: 1, 274 - 277, 30.06.2017
https://doi.org/10.17261/Pressacademia.2017.600

Abstract

Nowadays,  text classification is
used in various fields of research and applications, such as information
retrieval, text mining, and data mining. This study tests the Naïve Bayes,
K-Nearest Neighbors, and Support Vector Machine algorithms on a relatively
large dataset of Arabic documents. This dataset comprise 1,000 Arabic documents
that are distributed across 10 classes. This comparison is based on recall and
precision measures. The evaluation results show that the Support Vector Machine
algorithms classifier outperforms the other two

References

  • Ababneh, J., Almomani, O., Hadi, W., El-Omari, N.K.T., and Al-Ibrahim, A., "Vector Space Models to Classify Arabic Text," International Journal of Computer Trends and Technology (IJCTT), vol 7, 2014
  • Agirre E., Lacalle O., and Soroa A., “Knowledge-Based WSD on Specific Domains: Performing Better than Generic Supervised WSD,” in Proceedings of the 21st International Joint Conference on Artificial Intelligence, San Francisco, USA, pp. 1501-1506, 2009.
  • Alsaleem, S., " Automated Arabic Text Categorization Using SVM and NB," International Arab Journal of e-Technology, Vol. 2, 2011
  • Al-Harbi, S., Almuhareb, A., Al-Thubaity, A., Khorsheed, M. S. and Al-Rajeh, A. "Automatic Arabic Text Classification," Proceedings of The 9th International Conference on the Statistical Analysis of Textual Data, Lyon-France, 2008
  • Al-Kabi, M. N., & Al-Sinjilawi, S. I. (2007). a Comparative Study of the Efficiency of Different Measures To Classify Arabic Text. University of Sharjah Journal of Pure & Applied Sciences, 4(2), 13–26.
  • Bawaneh, M.J., Alkoffash, M.S., and Al Rabea A.I."ArabicText Classification using K-NN and Naive Bayes". Journal of Computer Science, vol. 4, 2008. Duwairi, R. "Arabic Text Categorization," The International Arab Journal of Information Technology, Vol. 4, 2007.
  • El-halees, A. (2011). Arabic Opinion Mining Using Combined Classification Approach. Proceeding The International Arab Conference On Information Technology, Azrqa, Jordan.
  • Gharib, T. F., Habib, M. B., & Fayed, Z. T. (2009). Arabic Text Classification Using Support Vector Machines. International Journal of Computers and Their Applications, 16(4), 192–199. Retrieved from http://purl.utwente.nl/publications/75679
  • Hanandeh E., Mamoun S.The Automated VSMs to Categorize Arabic Text Data Sets,INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY,VOL 13, NO 1 (2014)MARCH-2014.PP.4047-4081
  • Khorsheed, M. S., & Al-Thubaity, A. O. (2013). Comparative evaluation of text classification techniques using a large diverse Arabic dataset. Language Resources and Evaluation, 47(2), 513–538. http://doi.org/10.1007/s10579-013-9221-8
  • Khreisat, L. "A machine learning approach for Arabic text classification using N-gram frequency statistics," Journal of Informatics, Volume 3, 2009.
  • Karima, A, Zakaria, E and Yamina, T.G. "Arabic Text Categorization: A Comparative Study of different Representation Model, " Journal of Theoretical and Applied Information Technology, Vol. 38, 2005.
  • Mesleh, A.M.A. Support Vector Machine text Classifier for Arabic Articles: Ant Colony Optimization-based Feature Subset Selection., The Arab Academy for banking and financial Science, PHD. Thesis, 2008.
  • Syiam. M. M., Z. T. Fayed & M. B. Habib. An intelligent system for Arabic text categorization. IJICIS, Vol.6, No. 1 JANUARY 2006.
  • Wahbeh, A. H., Al-Radaideh, Q. A., Al-Kabi, , M. N., & Al-Shawakfa, E. M. (2012). A Comparison Study between Data Mining Tools over some Classification Methods. International Journal of Advanced Computer Science and Applications, Special Issue on Artificial Intelligence, , 2(8), 19–26
There are 15 citations in total.

Details

Journal Section Articles
Authors

Essam Hanandeh This is me

Publication Date June 30, 2017
Published in Issue Year 2017 Volume: 5 Issue: 1

Cite

APA Hanandeh, E. (2017). OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY. PressAcademia Procedia, 5(1), 274-277. https://doi.org/10.17261/Pressacademia.2017.600
AMA Hanandeh E. OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY. PAP. June 2017;5(1):274-277. doi:10.17261/Pressacademia.2017.600
Chicago Hanandeh, Essam. “OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY”. PressAcademia Procedia 5, no. 1 (June 2017): 274-77. https://doi.org/10.17261/Pressacademia.2017.600.
EndNote Hanandeh E (June 1, 2017) OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY. PressAcademia Procedia 5 1 274–277.
IEEE E. Hanandeh, “OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY”, PAP, vol. 5, no. 1, pp. 274–277, 2017, doi: 10.17261/Pressacademia.2017.600.
ISNAD Hanandeh, Essam. “OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY”. PressAcademia Procedia 5/1 (June 2017), 274-277. https://doi.org/10.17261/Pressacademia.2017.600.
JAMA Hanandeh E. OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY. PAP. 2017;5:274–277.
MLA Hanandeh, Essam. “OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY”. PressAcademia Procedia, vol. 5, no. 1, 2017, pp. 274-7, doi:10.17261/Pressacademia.2017.600.
Vancouver Hanandeh E. OVERVIEW AND COMPARISON OF THREE CLASSIFIERS: ARABIC DOCUMENTS AS A CASE STUDY. PAP. 2017;5(1):274-7.

PressAcademia Procedia (PAP) publishes proceedings of conferences, seminars and symposiums. PressAcademia Procedia aims to provide a source for academic researchers, practitioners and policy makers in the area of social and behavioral sciences, and engineering.

PressAcademia Procedia invites academic conferences for publishing their proceedings with a review of editorial board. Since PressAcademia Procedia is an double blind peer-reviewed open-access book, the manuscripts presented in the conferences can easily be reached by numerous researchers. Hence, PressAcademia Procedia increases the value of your conference for your participants. 

PressAcademia Procedia provides an ISBN for each Conference Proceeding Book and a DOI number for each manuscript published in this book.

PressAcademia Procedia is currently indexed by DRJI, J-Gate, International Scientific Indexing, ISRA, Root Indexing, SOBIAD, Scope, EuroPub, Journal Factor Indexing and InfoBase Indexing. 

Please contact to procedia@pressacademia.org for your conference proceedings.