Social Media Algorithms and Artificial Intelligence: Transformation of the Information Space - Positive and Negative Aspects (2023-2024, Facebook, X (Formerly Twitter), TikTok, and YouTube)
Nino Chalaganidze and
Zaza Tsotniashvili
Studies in Media and Communication, 2026, vol. 14, issue 2, 391-404
Abstract:
The integration of artificial intelligence and algorithmic systems into social media platforms has fundamentally reshaped the information landscape during 2023-2024. This comprehensive study examines the transformation of the information space across major platforms- Facebook, X (formerly Twitter), TikTok, and YouTube, analyzing both positive and negative dimensions of AI-driven algorithmic curation. Through systematic analysis of platform policies, algorithmic mechanisms, and content moderation frameworks, this research identifies significant opportunities for information democratization and targeted harm prevention alongside concerning risks of filter bubbles, algorithmic bias, and manipulated discourse. The study demonstrates that AI algorithms, while enabling unprecedented scalability in content moderation achieving accuracy rates of 85-96%, simultaneously generate echo chambers that reduce exposure to diverse viewpoints. The research reveals critical disparities in algorithmic treatment across demographic groups and geographic regions, with particular challenges in non-Western language content moderation. A comprehensive framework for ethical algorithmic governance is proposed, emphasizing transparency requirements, bias auditing mechanisms, and participatory design approaches. This paper concludes that the future of information integrity depends not on algorithmic advancement alone but on institutional commitments to democratic accountability and cross-stakeholder collaboration in platform governance.
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:rfa:smcjnl:v:14:y:2026:i:2:p:391-404
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