HYBRID CLASSIFICATION FOR SENTIMENT ANALYSIS OF MOVIE REVIEWS
Journal: International Journal of Engineering Sciences & Research Technology (IJESRT) (Vol.7, No. 4)Publication Date: 2018-04-30
Authors : Janane S K Keerthana M S Subbulakshmi B;
Page : 724-728
Keywords : Sentiment Analysis; Movie Review; Ensemble classifier; Majority Vote Classifier;
Abstract
Internet has provided people a platform to express their opinions and thoughts. Sentiment analysis helps to analyse those opinions and categorize them. This research is done on the movie review dataset obtained from the Internet Movie Database (IMDb). The data is classified using some of the popular learning based classifiers like Naive Bayes, Decision Tree and Support Vector Machine (SVM) classifiers and their accuracies are compared. Finally, the three learning based classifiers are combined using the Majority vote ensemble classifier. It is found that the accuracy obtained from the above said ensemble is better than the individual classifiers and also better than the ensemble which uses the random forest as one of the classifiers.
Other Latest Articles
- EXPERIMENTAL INVESTIGATION ON EFFECT OF INCLUSION OF HOOKED STEEL FIBER ON GGBS BASED GEOPOLYMER CONCRETE
- EXPERIMENTAL MEASUREMENT OF ION-CONCENTRATION IN ARC PLASMA SEEDED WITH SIO2 AT ATMOSPHERIC PRESSURE
- ANALYSIS OF “A CLUSTERING BASED NETWORK PROTOCOL IN UNDERCOVER MINING DOMAIN”
- MODERN ADVANCES IMPLEMENTATION FOR A PASTROL VENTURE MODELS OF NOVEL CLOUD COMPUTING
- AN EXPERIMENTAL STUDY ON VISCOSITY OF WATER SOLUBLE POLYMERS USED IN PRE COMPRESSED PRESSBOARDS INSULATION
Last modified: 2018-04-28 21:05:28