Authors
Nurulhuda Zainuddin, Ali Selamat
Publication date
2014/9/2
Conference
2014 international conference on computer, communications, and control technology (I4CT)
Pages
333-337
Publisher
IEEE
Description
Sentiment analysis is treated as a classification task as it classifies the orientation of a text into either positive or negative. This paper describes experimental results that applied Support Vector Machine (SVM) on benchmark datasets to train a sentiment classifier. N-grams and different weighting scheme were used to extract the most classical features. It also explores Chi-Square weight features to select informative features for the classification. Experimental analysis reveals that by using Chi-Square feature selection may provide significant improvement on classification accuracy.
Total citations
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Scholar articles
N Zainuddin, A Selamat - … conference on computer, communications, and control …, 2014