Optimized bidirectional gated recurrent unit‑convolutional neural network for enhanced social network security

Kamalakannan, T. (2025) Optimized bidirectional gated recurrent unit‑convolutional neural network for enhanced social network security. Journal of Data, Information and Management, 7. pp. 301-314. ISSN 2524-6364

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Abstract

The rapid growth of social networks has significantly transformed digital communication, facilitating large-scale information
sharing. However, this expansion has also introduced complex security risks, including phishing, spam, fake accounts, cyberbullying, AI-generated misinformation, and sophisticated bot networks. Traditional security approaches often fail to address the
dynamic and multifaceted nature of these threats. To tackle these challenges, we introduce an Optimized Bidirectional Gated
Recurrent Unit and Convolutional Neural Network (O-Bi-GRU-DCNN) model designed specifically for social network security.
This model combines the sequential learning power of Bidirectional Gated Recurrent Units (Bi-GRU) to capture contextual
dependencies in social media data with the feature extraction capabilities of Deep Convolutional Neural Networks (CNN). Additionally, Archimedes Optimization (ArO) is used to enhance the model's accuracy. Experimental results reveal that the proposed
model outperforms existing security techniques in detecting malicious activities, spam, and fake accounts, achieving an impressive accuracy of 98.9%. This approach offers a robust and scalable solution to enhance security across social network platforms.

Item Type: Article
Subjects: Computer Science Engineering > Neural Network
Domains: Allied Health Sciences
Animation
Astrology
Automobile Engineering
Biochemistry
Bioengineering
Bioinformatics
Biomedical Engineering
Biotechnology
Depositing User: Mr IR Admin
Date Deposited: 10 May 2026 11:39
Last Modified: 11 May 2026 09:22
URI: https://ir.vistas.ac.in/id/eprint/14111

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