Word Embedding and Feature Reduction for Sentiment Analysis Using GA
DOI:
https://doi.org/10.32628/CSEIT206314Keywords:
Sentiment analysis, opinion mining, genetic algorithm, word embedding, feature reduction.Abstract
Sentiment analysis (SA), also called as opinion mining is the technique for the removal of opinions of a specific entity or feature from reviews dataset. The opinions of other users help in decision making process of people. This paper studies different methods that are aimed at SA. These approaches vary from semantic based methods, machine learning, neural networks, syntactical methods with each having its own strength. Although hybrid approach also exists where the idea is to combine strengths of two or more methods to increase the accuracy. A framework in which sentiment analysis is done by using word embedding and feature reduction techniques is also proposed. Word embedding is a technique in which low-dimensional vector representation of words is provided. Feature reduction method is used with Support Vector Machine (SVM) classifier. The framework will perform sentiment analysis of user opinions by using a machine learning approach and provides a recommendation system for the ease of decision making for users. The proposed system in this paper has solved the scalability problem and improved the accuracy.
References
- Farkhund Iqbal,Jahanzeb Maqbool Hashmi and Benjamin C. Fung, "A Hybrid Framework for Sentiment Analysis Using Genetic Algorithm based Feature Reduction",2017.
- M. Pontiki et al., "SemEval-2016 task 5: Aspect based sentiment analysis,'' in Proc. 8th Int. Workshop Semantic Eval. (SemEval), 2014.
- P. C. S. Njølstad, L. S. Høysæter, W. Wei, and J. A. Gulla, "Evaluating feature sets and classifiers for sentiment analysis of financial news,'' in Proc. IEEE/WIC/ACM Int. Joint Conf. Web Intell. (WI) Intell. Agent Technol. (IAT), vol. 2, Aug. 2014.
- M. Govindarajan, "Sentiment analysis of movie reviews using hybrid method of naive Bayes and genetic algorithm,'' Int. J. Adv. Comput. Res., vol. 3, no. 4, 2013.
- B. Pang and L. Lee,“Opinion mining and sentiment analysis',' Found. Trends Inf. Retr., vol. 2, 2008.
- A. Davies and Z. Ghahramani, "Language-independent Bayesian sentiment mining of Twitter,'' in Proc. Workshop Social Netw. Mining Anal., 2011.
- W. Medhat, A. Hassan, and H. Korashy, “Sentiment analysis algorithms and applications: A survey,'' Ain Shams Eng. J., vol. 5, no. 4, 2014.
- A. Agarwal, B. Xie, I.Vovsha, O. Rambow, and R. Passonneau, “Sentiment analysis of Twitter data,'' in Proc. Workshop Lang. Social Media, 2011.
- E. Kouloumpis, T.Wilson, and J. Moore, “Twitter sentiment analysis: The good the bad and the OMG!'' in Proc. ICWSM, vol. 11. 2011.
- Ling-Chih Yu, J. Wang, K. Robert and X. Zhang,"Refining Word Embeddings using intensity scores for Sentiment Analysis", Vol. 26, March 2018
- Y. Beingo, R. Ducharme,"A Neural Probabilistic Language Model", J. Mach Learn Res., Vol. 3.
- A. L. Maas, R.E.Daly,"Learning Word Vectors for Sentiment Analysis". In Proc. ACL, 2011.
- Y. Ren, Y. Zhang and D. Ji,"Improving Twitter Sentiment Classification using Topic-enriched Multi prototype Word Embedding", in Proc. AAAI, 2016.
- A. Collomb, C. Costea, D. Joyeux, O. Hasan, and L. Brunie, "A study and comparison of sentiment analysis methods for reputation evaluation,'' Tech. Rep. RR-LIRIS-2014-002, 2014.
- L. M. Schmitt, "Theory of genetic algorithms,'' Theor. Comput. Sci., vol. 259, May 2001.
- A. Pak and P. Paroubek, ``Twitter as a corpus for sentiment analysis and opinion mining,'' in Proc. LREC, 2010.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.