Deepfake Detection on Social Media: Leveraging Deep Learning and Fast text Embeddings for Identifying Machine-Generated
Metadatos
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Universidad de Granada
Materia
Deepfake Technology Social media platforms Fast Text embeddings Fact-Checking Agencies
Date
2024-12-31Referencia bibliográfica
Rajkumar P1, G. Tanmai2, K. Ankitha2, M. Srilekha2 (2024). Deepfake Detection on Social Media: Leveraging Deep Learning and Fast text Embeddings for Identifying Machine- Generated,Vol.15(5).277-285. ISSN 1989-9572. DOI:10.47750/jett.2024.15.05.27
Résumé
Deepfake technology, which uses AI to create manipulated media, poses a significant threat to
information integrity on social media platforms. In India, the rise of deepfake content has grown
exponentially, especially in the political and entertainment domains, where fake news and AI-generated
videos have gone viral, leading to misinformation. The primary objective is to develop a robust AI
model that accurately detects deepfake content on social media platforms, focusing on identifying
machine-generated tweets using FastText embeddings. Traditional methods involved human
moderation, fact-checking agencies, and manual filtering of social media posts based on predefined
rules and keyword matching. These methods were time-consuming and often inaccurate, lacking the
scalability to manage the massive volume of online content. The manual detection of deepfakes and AI-
generated content is highly inefficient, prone to errors, and incapable of handling the vast volume of
social media data in real time. As a result, harmful and misleading information can spread widely before
being identified or removed. With the growing influence of social media in shaping public opinion, the
motivation behind this research is to combat misinformation and safeguard the integrity of online
discourse. Particularly deep learning models can significantly improve the detection of deepfakes by
automating the analysis of social media content. FastText embeddings will convert tweets into
meaningful word vectors, while deep learning models can be applied to classify whether a tweet is
human-generated or AI-generated. This approach offers real-time detection, improved accuracy, and
scalability compared to traditional methods.