FAEO-ECNN: cyberbullying detection in social media platforms using topic modelling and deep learning

The widespread use of Social Media Platforms (SMP) such as Twitter, Instagram, Facebook, etc. by individuals has recently led to a remarkable increase in Cyberbullying (CB). It is a challenging task to prevent CB in such platforms since bullies use sarcasm or passive-aggressiveness strategies. This...

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Veröffentlicht in:Multimedia tools and applications 2023-12, Vol.82 (30), p.46611-46650
Hauptverfasser: Murshed, Belal Abdullah Hezam, Suresha, Abawajy, Jemal, Saif, Mufeed Ahmed Naji, Abdulwahab, Hudhaifa Mohammed, Ghanem, Fahd A.
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container_end_page 46650
container_issue 30
container_start_page 46611
container_title Multimedia tools and applications
container_volume 82
creator Murshed, Belal Abdullah Hezam
Suresha
Abawajy, Jemal
Saif, Mufeed Ahmed Naji
Abdulwahab, Hudhaifa Mohammed
Ghanem, Fahd A.
description The widespread use of Social Media Platforms (SMP) such as Twitter, Instagram, Facebook, etc. by individuals has recently led to a remarkable increase in Cyberbullying (CB). It is a challenging task to prevent CB in such platforms since bullies use sarcasm or passive-aggressiveness strategies. This article proposes a new CB detection model named FAEO-ECNN for detecting and classifying cyberbullying on social media platforms. The proposed approach integrates Fuzzy Adaptive Equilibrium Optimization (FAEO) clustering-based topic modelling and Extended Convolutional Neural Network (ECNN) to enhance the accuracy of CB detection process. Initially, pre-processing is performed in order to cleanse the dataset. Next, the features are extracted using multiple models. The unsupervised Fuzzy Adaptive Equilibrium Optimization (FAEO) is utilized for discovering the latent topics from the pre-processed input data, which automatically examines the text data and creates clusters of words. Finally, the cyberbullying classification makes use of the ECNN and Rain Optimization (RO) algorithm to detect CB from posts/texts. We evaluated the proposed FAEO-ECNN thoroughly with two short text datasets: Real-world CB Twitter (RW-CB-Twitter) and Cyberbullying Menedely (CB-MNDLY) datasets in comparison to State of The Art (SoTA) models like Long Short Term Memory (LSTM), Bi-directional LSTM (BLSTM), RNN, and CNN-LSTM. The proposed FAEO-ECNN model outperformed the SoTA models in detecting Cyberbullying on SMP. It has obtained 92.91% of accuracy, 92.28% of recall, 92.53% of precision, and 92.40% of F-Measure over CB-MNDLY dataset. Moreover, it has achieved 91.89% of accuracy, 91.32% of recall, 91.81% of precision, and 91.56% of F-Measure on RW-CB-Twitter dataset.
doi_str_mv 10.1007/s11042-023-15372-3
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It is a challenging task to prevent CB in such platforms since bullies use sarcasm or passive-aggressiveness strategies. This article proposes a new CB detection model named FAEO-ECNN for detecting and classifying cyberbullying on social media platforms. The proposed approach integrates Fuzzy Adaptive Equilibrium Optimization (FAEO) clustering-based topic modelling and Extended Convolutional Neural Network (ECNN) to enhance the accuracy of CB detection process. Initially, pre-processing is performed in order to cleanse the dataset. Next, the features are extracted using multiple models. The unsupervised Fuzzy Adaptive Equilibrium Optimization (FAEO) is utilized for discovering the latent topics from the pre-processed input data, which automatically examines the text data and creates clusters of words. Finally, the cyberbullying classification makes use of the ECNN and Rain Optimization (RO) algorithm to detect CB from posts/texts. We evaluated the proposed FAEO-ECNN thoroughly with two short text datasets: Real-world CB Twitter (RW-CB-Twitter) and Cyberbullying Menedely (CB-MNDLY) datasets in comparison to State of The Art (SoTA) models like Long Short Term Memory (LSTM), Bi-directional LSTM (BLSTM), RNN, and CNN-LSTM. The proposed FAEO-ECNN model outperformed the SoTA models in detecting Cyberbullying on SMP. It has obtained 92.91% of accuracy, 92.28% of recall, 92.53% of precision, and 92.40% of F-Measure over CB-MNDLY dataset. Moreover, it has achieved 91.89% of accuracy, 91.32% of recall, 91.81% of precision, and 91.56% of F-Measure on RW-CB-Twitter dataset.</abstract><cop>New York</cop><pub>Springer US</pub><doi>10.1007/s11042-023-15372-3</doi><tpages>40</tpages></addata></record>
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subjects Accuracy
Algorithms
Artificial neural networks
Bullying
Classification
Clustering
Computer Communication Networks
Computer Science
Cyberbullying
Data Structures and Information Theory
Datasets
Deep learning
Digital media
Machine learning
Modelling
Multimedia Information Systems
Optimization
Recall
Social networks
Special Purpose and Application-Based Systems
title FAEO-ECNN: cyberbullying detection in social media platforms using topic modelling and deep learning
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