In this paper, we present a mechanism to predict the sentiment on Turkish tweets by adopting two methods based on polarity lexicon (PL) and artificial intelligence (AI). The method of PL introduces a dictionary of words and matches the words to those in the harvested tweets. The tweets are then classified to be either positive, negative, or neutral based on the result found after matching them to the words in the dictionary. The method of AI uses support vector machine (SVM) and random forest (RF) classifiers to classify the tweets as either positive, negative or neutral. Experimental results show that SVM performs better on stemmed data by achieving an accuracy of 76%, whereas RF performs better on raw data with an accuracy of 88%. The performance of PL method increases continuously from 45% to 57% as data are being modified from a raw data to a stemmed data.
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6 December 2019
THIRD INTERNATIONAL CONFERENCE OF MATHEMATICAL SCIENCES (ICMS 2019)
4–8 September 2019
Istanbul, Turkey
Research Article|
December 06 2019
Sentiment analysis of Turkish Twitter data
Harisu Abdullahi Shehu;
Harisu Abdullahi Shehu
a)
1)
Pamukkale University
, 20160, Denizli Turkey
a)Corresponding author: harisushehu@gmail.com
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Sezai Tokat;
1)
Pamukkale University
, 20160, Denizli Turkey
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Md. Haidar Sharif;
2)
University of Hail
, Ha’il - 81451. Kingdom of Saudi Arabia
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Sahin Uyaver
3)
Turkish-German University, Faculty of Science
, Sahinkaya Cad. No: 108 34820 Beykoz Istanbul Turkey
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a)Corresponding author: harisushehu@gmail.com
b)
Electronic mail: stokat@pau.edu.tr
c)
Electronic mail: md.sharif@uoh.edu.sa
d)
Electronic mail: uyaver@tau.edu.tr
AIP Conf. Proc. 2183, 080004 (2019)
Citation
Harisu Abdullahi Shehu, Sezai Tokat, Md. Haidar Sharif, Sahin Uyaver; Sentiment analysis of Turkish Twitter data. AIP Conf. Proc. 6 December 2019; 2183 (1): 080004. https://doi.org/10.1063/1.5136197
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