Open Access Open Access  Restricted Access Subscription or Fee Access

Preprocessing Technique for Classification of M-Learning Reviews using Soft Computing Approach

A. Nisha Jebaseeli, Dr. E. Kirubakaran

Abstract


The development of communication technology has resulted in easy information access via internet. The rapid increase in the use of mobile devices has popularized pedagogical methods like learning through mobile devices, PDAs, etc. Various Mobile Learning (M-Learning) systems are available and the user opinions about them are aired in social blogs or review websites. This research paper investigates Opinion mining classifications particularly of M-Learning system based not only on words but also on the corpus from the reviewed documents. A preprocessing methodology is proposed in this paper to enhance classifications in the dataset under study. The corpus is ranked using SVD through which, the data is prepared for Opinion mining. The classification accuracy is evaluated through Naïve Bayes, Random Forest, k Nearest Neighbor (kNN) data mining algorithms and Learning Vector Quantization (LVQ), Elman Neural Network, Feed Forward Neural Network (FFNN) algorithms with the preprocessed dataset.

Keywords


Classification Accuracy, Machine Learning, M-Learning, Opinion Mining, Preprocessing.

Full Text:

PDF

References


Yu-Liang Ting, R. “Mobile learning: current trend and future challenges”, Fifth IEEE International Conference on Advanced Learning Technologies, pp-603- 607, 2005.

Karina Gibert, Joaquín Izquierdo, Geoff Holmes,Ioannis Athanasiadis, Joaquim Comas, Miquel Sànchez-Marrè, “On the role of pre and post-processing in environmental data mining”, International Congress on Environmental Modeling and Software Integrating Sciences and Information Technology for Environmental Assessment and Decision Making, pp. 1937-1958, 2008.

V.Srividhya, R.Anitha, “Evaluating Preprocessing Techniques in Text Categorization”, International Journal of Computer Science and Application, Volume 47, No. 11, pp-36-39, 2010.

Dave, D., Lawrence, A., and Pennock, D. “Mining the Peanut Gallery: Opinion Extraction and Semantic Classification of Product Reviews”, Proceedings of International World Wide Web Conference (WWW’03), pp. 519-528, 2003.

Xu, K., Liao, S. S., Li, J., & Song, Y. “Mining comparative opinions from customer reviews for Competitive Intelligence”, Decision Support Systems, Volume 50, pp-743-754, 2011.

Xue, X. and Zhou, Z., “Distributional Features for Text Categorization”, IEEE Transactions on Knowledge and Data Engineering, Volume. 1, No. 3, pp. 428-44, 2009.

Porter, M., “An algorithm for suffix stripping, Program”, Addison-Wesley, Reading, Vol. 14, No. 3, pp-130–137, 1980.

Salton, G. and Buckley, C., “Term weighting approaches in automatic text retrieval”, Information Processing and Management, 1988.

S. Deerwester, S.T. Dumais, G.W. Furnas, and T.K. Landauer, “Indexing by latent semantic analysis”, Journal of the American Society for Information Sciences, Volume 41,pp-391–407, 1990.

Rees. D.G., “Essential Statistics”, 4th Edition, Chapman and Hall/CRC. ISBN 1-58488-007-4 (Section 9.5), 2001.

Pimwadee Chaovalit, Lina Zhou, “Movie Review Mining: a Comparison between Supervised and Unsupervised Classification Approaches”, Proceedings of the 38th Hawaii International Conference on System Sciences (IEEE), Volume 04, pp.112-115, 2005.

Powers, D.M.W, “Evaluation: From Precision, Recall And F-Measure To Roc, Informedness, Markedness & Correlation”, Journal of Machine Learning Technologies, Volume 2, Issue 1, pp-37-63, 2011.


Refbacks

  • There are currently no refbacks.