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A Data-Driven Approach: Assessing the Relevance of AI Algorithms in Tailoring Personalised Content for Social Media Users

Proceedings

A Data-Driven Approach: Assessing the Relevance of AI Algorithms in Tailoring Personalised Content for Social Media Users

Proceedings

Cite this:
APOSTOL, I. G., PRELIPCEAN, M., BOSTANICA, E., & MUNTHIU, M.C. (2024). A Data-Driven Approach: Assessing the Relevance of AI Algorithms in Tailoring Personalised Content for Social Media Users. In Proceedings of the International Conference on Economics and Social Sciences. The International Conference on Economics and Social Sciences. Editura ASE. https://doi.org/10.24818/icess/2024/086

086 A Data-Driven Approach Assessing the Relevance of AI Algorithms in Tailoring Personalised Content for Social Media Users 994-1003

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The 9th ICESS
18-19 June 2026

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