Sentiment Analysis of Multilingual Dataset of Bahraini Dialects, Arabic, and English

Author:

Omran Thuraya1ORCID,Sharef Baraa2,Grosan Crina3,Li Yongmin1ORCID

Affiliation:

1. Department of Computer Science, Brunel University London, Uxbridge UB8 3PH, UK

2. Department of Information Technology, College of Information Technology, Ahlia University, Manama P.O. Box 10878, Bahrain

3. Division of Applied Technologies for Clinical Care, King’s College London, London WC2R 2LS, UK

Abstract

Sentiment analysis is an application of natural language processing (NLP) that requires a machine learning algorithm and a dataset. In some cases, the dataset availability is scarce, particularly with Arabic dialects, precisely the Bahraini ones, which necessitates using an approach such as translation, where a rich source language is exploited to create the target language dataset. In this study, a dataset of Amazon product reviews in Bahraini dialects is presented. This dataset was generated using two cascading stages of translation—a machine translation followed by a manual one. Machine translation was applied using Google Translate to translate English Amazon product reviews into Standard Arabic. In contrast, the manual approach was applied to translate the resulting Arabic reviews into Bahraini ones by qualified native speakers utilizing constructed customized forms. The resulting parallel dataset of English, Standard Arabic, and Bahraini dialects is called English_Modern Standard Arabic_Bahraini Dialects product reviews for sentiment analysis “E_MSA_BDs-PR-SA”. The dataset is balanced, composed of 2500 positive and 2500 negative reviews. The sentiment analysis process was implemented using a stacked LSTM deep learning model. The Bahraini dialect product dataset can be utilized in the transfer learning process for sentimentally analyzing another dataset in Bahraini dialects.

Publisher

MDPI AG

Subject

Information Systems and Management,Computer Science Applications,Information Systems

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1. A survey on sentiment analysis and its applications;Neural Computing and Applications;2023-08-17

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