Détection automatique des faux comptes sur les réseaux sociaux à l’aide de l’apprentissage profond
Date
2025
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
university of bordj bou arreridj
Abstract
In the digital age, social media platforms have become essential tools for
communication, information dissemination, and brand visibility. However, this widespread
use has given rise to a growing concern: the proliferation of fake accounts, particularly on
Instagram. These inauthentic profiles, often automated or maliciously crafted, pose serious
threats to user security, distort engagement metrics, and serve as vehicles for disinformation
and fraudulent activities.
To address this challenge, this thesis presents a deep learning-based approach using
Long Short-Term Memory (LSTM) neural networks, which are well-suited to modeling the
sequential and behavioral data of social media users. A synthetic dataset representing
Instagram accounts was used to train and evaluate the model.
The results highlight the method’s ability to accurately classify accounts as genuine
or fake, offering strong performance metrics and promising generalization capabilities.
This research contributes to the broader field of cybersecurity and illustrates the potential
of artificial intelligence in detecting online threats and enhancing digital platform integrity