Publication: Topluluk Hibrit Öğrenme Algoritması Kullanılarak DDİ ve Özellik Çıkarma ile Duygu Analizinin Performansının İyileştirilmesi
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Abstract
Sentiment analysis is a challenging problem in Natural Language Processing since every language has its own character within
several difficulties such as ambiguity, synonymy, negative suffixes…etc. Since words with ambiguity can have different
sentiment scores depending on the meaning they have in their corresponding context, we accomplished a study on Turkish
language to determine whether the polarity scores of these polysemous words may differ according to their meaning. For a
word with ambiguity, we first made a polarity calculation module to calculate its polarity score. This way, we calculated the
polarity scores of 100 Turkish polysemous words. Then, since negation directly affects the correct meaning of the word in the
sentiment analysis, a negation handler module is also implemented. After that, we prepared a sentiment polarity corpus which
consists of 159,876 Turkish words including 100 Turkish polysemous words. Actually, the main purpose of this study is to
detect sentiment polarity of Turkish texts by considering and building a specialized module for polysemous words. In short,
we built a system for Turkish sentiment polarity detection task including these modules: Pre-processing, Polarity Calculation
Module, Negation Handling Module, Feature Generation Module, and Classification Module. According to our knowledge,
this is the first study which includes all of these modules in one Turkish sentiment analysis task. Finally, we conducted this
corpus using an ensemble hybrid regularized learning algorithm on two self-collected Twitter-datasets. Experimental results
show that the suggested approach improves the classification performance on Turkish sentiment analysis task.
Keywords: Sentiment analysis, word ambiguity, machine learning, hybrid learning algorithm, LSTM
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ALTINEL GİRGİN A. B., ŞAHİN S., "Topluluk Hibrit Öğrenme Algoritması Kullanılarak DDİ ve Özellik Çıkarma ile Duygu Analizinin Performansının İyileştirilmesi", International journal of advances in engineering and pure sciences (Online), cilt.35, sa.1, ss.125-141, 2023
