Publication: Performance analysis ofdifferent sentiment polarity dictionaries onturkish sentiment detection
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Abstract
- In places such as social media and news websites,
the number of web-based textual materials those deal with
today’s events and contain people’s emotions continues to increase inevitably day by day. All of these texts, with their own
importance, affect our society in some way. For this reason, it is
very important to automatically detect the sentiment polarities
of these texts. In this study we developed several statisticalbased semantic algorithms for Turkish sentiment analysis task.
Furthermore, we conducted experiments on sentiment analysis
in Turkish texts using different sentiment polarity dictionaries.
We perform a number of experiments on some datasets which
we collected from Twitter platform. In our experimental environment we also use two dictionaries to get the sentiment polarity score of Turkish terms and phrases: We built the first sentiment polarity dictionary by using a translator and this dictionary includes about 159,876 Turkish words. We built the
second sentiment polarity dictionary by using GDELT (Global
Data on Events, Languages and Tone) and this dictionary includes about 84,744 Turkish words. We also implement the
state of the art baseline algorithms in order to compare the
performance results. There are three important outcomes of
this study: 1.) We built two publicly available sentiment polarity dictionaries for Turkish, 2.) We developed statistical-based
novel semantic algorithms for Turkish sentiment analysis task,
3.) We report the observations of the effect of using different
semantic-polarity dictionaries on Turkish sentiment polarity
detection problem. Experiment results show that the algorithms
we have developed are valuable because they give higher classification performance than the baseline algorithms on Turkish
sentiment polarity detection task.
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Citation
ALTINEL GİRGİN A. B. , Buzlu K., İpek K., \"Performance Analysis of
Different Sentiment Polarity Dictionaries on
Turkish Sentiment Detection\", 2022 International Conference on INnovations in Intelligent SysTems and Applications (INISTA), Biarritz, Fransa, 08 Ağustos 2022, cilt.1, ss.1-6
