Improved Accuracy of Sentiment Analysis Movie Review Using Support Vector Machine Based Information Gain

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Abstract

The quality of a movie can be known from the opinions or reviews of previous audiences. This classification of reviews is grouped into positive opinions and negative opinions. One of the data mining algorithms that are most frequently used in research is the Support Vector Machine because itworks well as a method of classifying text but has a very sensitive deficiency in the selection of features. The Information Gain method as feature selection can solve problems faster and more stable convergence levels. After testing on two movie review datasets are Cornell and Stanford datasets.The results obtained on the Cornell dataset is the Support Vector Machine algorithm to produce an accuracy of 83.05%, while for the Support Vector Machine based on Information Gain, the accuracy value is 85.65%. Increased accuracy reached 2.6%. Then, the results obtained on the Stanford dataset is the Support Vector Machine algorithm yields a value of 86.46%, while for the Support Vector Machine based on Information Gain, the accuracy value is 86.62%. Increased accuracy reached 0.166%. Support Vector Machine based Information Gain on the problem of movie review sentiment analysis proved to provide more accurate value.

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APA

Maulana, R., Rahayuningsih, P. A., Irmayani, W., Saputra, D., & Jayanti, W. E. (2020). Improved Accuracy of Sentiment Analysis Movie Review Using Support Vector Machine Based Information Gain. In Journal of Physics: Conference Series (Vol. 1641). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/1641/1/012060

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