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Sentiment analysis in Turkish at different granularity levels

Published online by Cambridge University Press:  21 October 2016

RAHIM DEHKHARGHANI
Affiliation:
University of Bonab, Bonab, Iran e-mail: rdehkharghani@bonabu.ac.ir
BERRIN YANIKOGLU
Affiliation:
Faculty of Engineering and Natural Sciences, Sabancı University, Istanbul, Turkey e-mails: berrin@sabanciuniv.edu, ysaygin@sabanciuniv.edu
YUCEL SAYGIN
Affiliation:
Faculty of Engineering and Natural Sciences, Sabancı University, Istanbul, Turkey e-mails: berrin@sabanciuniv.edu, ysaygin@sabanciuniv.edu
KEMAL OFLAZER
Affiliation:
Carnegie Mellon University – Qatar, Doha, Qatar e-mail: ko@cs.cmu.edu

Abstract

Sentiment analysis has attracted a lot of research interest in recent years, especially in the context of social media. While most of this research has focused on English, there is ample data and interest in the topic for many other languages, as well. In this article, we propose a comprehensive sentiment analysis system for Turkish. We cover different levels of sentiment analysis such as aspect, sentence, and document levels as well as some linguistic issues such as conjunction and intensification in Turkish sentiment analysis. Our system is evaluated on Turkish movie reviews and the obtained accuracies range from sixty per cent to seventy-nine per cent in ternary and binary classification tasks at different levels of analysis.

Type
Articles
Copyright
Copyright © Cambridge University Press 2016 

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