Feature selection using random forestmethod for sentiment analysis

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Abstract

Background/Objectives: Online review has become important decision support system for the customers to decide on the subscription or purchse. This paper is aiming to suggest a method that improves the accuracy of the classifier. Methods/ Statistical analysis: Feature selection for sentiment analysis using decision forest method and Principal Component Analysis (PCA) is used for the feature reduction. The proposed method is evaluated using twitter data set. Findings: It is proved, that the proposed decision forest based feature extraction improves the precision of the classifiers in the range of 12.49% to 62.5% when compared to PCA and by 49.5% to 62.5% when compared to decision tree based feature selection. Application/Improvements: This method is applicable to product reviews, emotion detection, Knowledge transformation, and predictive analytics.

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APA

Jotheeswaran, J., & Koteeswaran, S. (2016). Feature selection using random forestmethod for sentiment analysis. Indian Journal of Science and Technology, 9(3), 1–7. https://doi.org/10.17485/ijst/2016/v9i3/86387

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