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Opinion Mining using Hybrid Methods

IJCA Proceedings on International Conference on Innovations in Computing Techniques (ICICT 2015)
© 2015 by IJCA Journal
ICICT 2015 - Number 2
Year of Publication: 2015
K. Umamaheswari
S. P. Rajamohana
G. Aishwaryalakshmi

K.umamaheswari, S.p.rajamohana and G.aishwaryalakshmi. Article: Opinion Mining using Hybrid Methods. IJCA Proceedings on International Conference on Innovations in Computing Techniques (ICICT 2015) ICICT 2015(2):17-21, July 2015. Full text available. BibTeX

	author = {K.umamaheswari and S.p.rajamohana and G.aishwaryalakshmi},
	title = {Article: Opinion Mining using Hybrid Methods},
	journal = {IJCA Proceedings on International Conference on Innovations in Computing Techniques (ICICT 2015)},
	year = {2015},
	volume = {ICICT 2015},
	number = {2},
	pages = {17-21},
	month = {July},
	note = {Full text available}


Opinion mining is opinion of the public that is given by each user about a particular product. People post many comments and messages about a movie posted in these social network. The comments of each user will be taken as opinions for each movie posted in these web forums. In this paper the rating of movie in twitter is taken to review a movie by using opinion mining This paper proposed a hybrid methodsusing SVM and PSO to classify the user opinions as positive, negative for the movie review dataset which could be used for better decisions.


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