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Deep Sentiment Analysis: A Case Study on Stemmed Turkish Twitter Data

Harisu Abdullahi ShehuSchool of Engineering and Computer Science, Victoria University of Wellington, Wellington, New ZealandMd. Haidar SharifCollege of Computer Science and Engineering, University of Hail, Hail, Saudi ArabiaMd Haris Uddin SharifCollege of Computer Science and Engineering, University of Hail, Hail, Saudi ArabiaRipon DattaDepartment of International Graduate Services, University of the Cumberlands, Williamsburg, KY, USASezai TokatDepartment of Computer Engineering, Pamukkale University, Denizli, TurkeyŞahın UyaverDepartment of Energy Science and Technologies, Turkish-German University, Istanbul, TurkeyHüseyin KusetoğullarıDepartment of Computer Science, Blekinge Institute of Technology, Karlskrona, SwedenRabie Α. RamadanComputer Engineering Department, College of Engineering, Cairo University, Cairo, Egypt
2021en
ABI

Аннотация

Sentiment analysis using stemmed Twitter data from various languages is an emerging research topic. In this paper, we address three data augmentation techniques namely Shift, Shuffle, and Hybrid to increase the size of the training data; and then we use three key types of deep learning (DL) models namely recurrent neural network (RNN), convolution neural network (CNN), and hierarchical attention network (HAN) to classify the stemmed Turkish Twitter data for sentiment analysis. The performance of these DL models has been compared with the existing traditional machine learning (TML) models. The performance of TML models has been affected negatively by the stemmed data, but the performance of DL models has been improved greatly with the utilization of the augmentation techniques. Based on the simulation, experimental, and statistical results analysis deeming identical datasets, it has been concluded that the TML models outperform the DL models with respect to both training-time (TTM) and runtime (RTM) complexities of the algorithms; but the DL models outperform the TML models with respect to the most important performance factors as well as the average performance rankings.

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