Sentimen Analisis Tweet Berbahasa Indonesia Dengan Deep Belief Network
Ira zulfa(1*), Edi Winarko(2)
(1) 
(2) Departemen Ilmu Komputer dan Elektronika, FMIPA UGM
(*) Corresponding Author
Abstract
Sentiment analysis is a computational research of opinion sentiment and emotion which is expressed in textual mode. Twitter becomes the most popular communication device among internet users. Deep Learning is a new area of machine learning research. It aims to move machine learning closer to its main goal, artificial intelligence. The purpose of deep learning is to change the manual of engineering with learning. At its growth, deep learning has algorithms arrangement that focus on non-linear data representation. One of the machine learning methods is Deep Belief Network (DBN). Deep Belief Network (DBN), which is included in Deep Learning method, is a stack of several algorithms with some extraction features that optimally utilize all resources. This study has two points. First, it aims to classify positive, negative, and neutral sentiments towards the test data. Second, it determines the classification model accuracy by using Deep Belief Network method so it would be able to be applied into the tweet classification, to highlight the sentiment class of training data tweet in Bahasa Indonesia. Based on the experimental result, it can be concluded that the best method in managing tweet data is the DBN method with an accuracy of 93.31%, compared with Naive Bayes method which has an accuracy of 79.10%, and SVM (Support Vector Machine) method with an accuracy of 92.18%.
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[1] B. Liu, “Sentiment Analysis and Subjectivity,” Handb. Nat. Lang. Process., no. 1, pp. 1–38, 2010.
[2] N. D. Putranti and E. Winarko, “Analisis Sentimen Twitter untuk Teks Berbahasa Indonesia dengan Maximum Entropy dan Support Vector Machine,” IJCCS (Indonesian J. Comput. Cybern. Syst., vol. 8, no. 1, pp. 91–100, 2014.
[3] A. Ng, J. Ngiam, C. Y. Foo, Y. Mai, C. Suen, A. Coates, A. Maas, A. Hannun, B. Huval, T. Wang, and Sameep Tandon, “Deep Learning Tutorial,” Univ. Stanford, 2015.
[4] Yuming Hua, Junhai Guo, and Hua Zhao, “Deep Belief Networks and deep learning,” Proc. 2015 Int. Conf. Intell. Comput. Internet Things, pp. 1–4, 2015.
[5] A. A. Al Sallab, R. Baly, and H. Hajj, “Deep Learning Models for Sentiment Analysis in Arabic,” ANLP Work. …, no. November, pp. 9–17, 2015.
[6] G. Hinton, “A Practical Guide to Training Restricted Boltzmann Machines A Practical Guide to Training Restricted Boltzmann Machines,” Computer (Long. Beach. Calif)., vol. 9, no. 3, p. 1, 2010.
[7] D. Erhan, A. Courville, and P. Vincent, “Why Does Unsupervised Pre-training Help Deep Learning ?,” J. Mach. Learn. Res., vol. 11, pp. 625–660, 2010.
[8] G. Tzortzis and A. Likas, “Deep Belief Networks for Spam Filtering,” 19th IEEE Int. Conf. Tools with Artif. Intell. 2007), pp. 306–309, 2007.
[9] G. E. Hinton, S. Osindero, and Y.-W. Teh, “A Fast Learning Algorithm for Deep Belief Nets,” Neural Comput., vol. 18, no. 7, pp. 1527–1554, 2006.
[10] R. Salakhutdinov, “Learning Deep Generative Models,” Mit.Edu, pp. 1–84, 2009.
DOI: https://doi.org/10.22146/ijccs.24716
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