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160441

Arabic CyberBullying Detection Using Arabic Sentiment Analysis

Article

Last updated: 24 Dec 2024

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Abstract

Abstract: The Sentiment Analysis is used for the text analysing, and classification of the text attitude.We are using the computing advancement in the form of Machine Learning (ML) and Support Vector Machine (SVM) algorithm to train a dataset which is collected automatically through ArabiTools and Twitter API. The dataset contents are labelled by both means, automatic and manual, in order to maintain the efficiency of the detection of CyberBullying tweets. The dataset is automatically labelled with respect to the nature of the tweet. If a tweet contains one or more CyberBullying words, it is labelled as CyberBullying, while if there isn't any word with aggressive meaning found, it is marked as the NonCyberBullying. After the data collection, there are several pre-processing techniques utilized, including the Normalization, Tokenization, Light Stemmer, ArabicStemmerKhoja, and Term Frequency-Inverse Document Frequency (TF-IDF)" term weighting schema." After the preliminary steps, (SVM), a “supervised algorithm," is used with WEKA and Python. There are three experiments that take place one with the WEKA tool using the Light Stemmer, the other is again with WEKA using ArabicStemmerKhoja, and the final experiment was performed with Python. The results are showing the WEKA is more efficient in classifying the text correctly, while Python is more effective with time to build the model. WEKA using the Light Stemmer have the efficiency of 85.49% and taken 352.51 seconds, and the WEKA using ArabicStemmerKhoja have the efficiency of 85.38% and taken 212.12 seconds, while the Python have the efficiency of 84.03% and taken 142.68 seconds

DOI

10.21608/ejle.2021.50240.1017

Keywords

Text Classification, Arabic text, Machine Learning, Sentiment Analysis, Support Vector Machine

Authors

First Name

Samar

Last Name

Almutiry

MiddleName

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Affiliation

College of Computer Science and Engineering, Taibah University Saudi Arabia- Almadinah Almunawarah

Email

samar888abdullah@gmail.com

City

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Orcid

-

First Name

Mohamed

Last Name

Abdel Fattah

MiddleName

-

Affiliation

Department of Electronics Technology, FIE, Helwan University, Cairo, Egypt

Email

maiahmed@taibahu.edu.sa

City

-

Orcid

-

Volume

8

Article Issue

1

Related Issue

23421

Issue Date

2021-04-01

Receive Date

2020-11-23

Publish Date

2021-04-01

Page Start

39

Page End

50

Print ISSN

2356-8208

Online ISSN

2356-8216

Link

https://ejle.journals.ekb.eg/article_160441.html

Detail API

https://ejle.journals.ekb.eg/service?article_code=160441

Order

4

Type

Original Article

Type Code

1,039

Publication Type

Journal

Publication Title

The Egyptian Journal of Language Engineering

Publication Link

https://ejle.journals.ekb.eg/

MainTitle

Arabic CyberBullying Detection Using Arabic Sentiment Analysis

Details

Type

Article

Created At

22 Jan 2023