Susilo, Tegar Heru and Rochimah, Siti (2013) Pengklasifikasian Topik dan Analisis Sentimen Dalam Media Sosial. In: Seminar Nasional Sistem & Teknologi Informasi (SNASTI) 2013, 24 Oktober 2013, Surabaya.

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Abstract

Social media has the capability to increase student’s potencies (Sturgeon, 2009) measured by intellectual, social, and performance level. This potency is affected by informal relation between lecturer and students. In the other hand, lecturer has the responsibilities for teaching, research, and public service (Peraturan Pemerintah no 37 tahun 2009). In relation to teaching, lecturer is responsible for guiding students. Guidance has meant to direct students to learn and have a good behavior by encouraging and providing examples. Therefore, lecturer should know, and understand the emotions his students have in order to provide appropriate treatment. These emotions can be seen from the student’s statuses in social media. In this research, an application is proposed. This application has the ability to retrieve information about student statuses in social media, doing topic classification using SVM (Yu, 2011) between academic and non-academic label, and doing sentiment analysis using Maximum Entropy (Soria, 2010) between positive and negative emotions. Testing was conducted in a form of dataset testing using learn and classify approach for testing SVM and MaxEnt classification result. In the dataset testing for SVM, the result shows an accuracy rate of 93%. While in the dataset testing for MaxEnt, the result shows an accuracy rate of 70% for positive document and 53% for negative document. Improved accuracy of sentiment analysis is obtained from the use of word-shape feature in the learning process.


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Item Type: Conference or Workshop Item (Paper)
Additional Information: ISBN : 978-979-8968-36-5
Uncontrolled Keywords: Social Media, Academic Performace, SVM, Maximum Entropy
Subjects: 600 – Technology > 650 Management & auxiliary services
Divisions: Penelitian dan Pengabdian Masyarakat > Seminar Nasional Sistem & Teknologi Informasi (SNASTI) 2013
Depositing User: Agung P. W.
Date Deposited: 19 Sep 2014 01:42
Last Modified: 19 Sep 2014 01:42
URI: http://sir.stikom.edu/id/eprint/579

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