LLM-Based Intelligent Agents for Music Recommendation: A Comparison with Classical Content-Based Filtering
By: Ronald Carvalho Boadana , Ademir Guimarães da Costa Junior , Ricardo Rios and more
Potential Business Impact:
Finds music you'll love, faster than before.
The growing availability of music on streaming platforms has led to information overload for users. To address this issue and enhance the user experience, increasingly sophisticated recommendation systems have been proposed. This work investigates the use of Large Language Models (LLMs) from the Gemini and LLaMA families, combined with intelligent agents, in a multi-agent personalized music recommendation system. The results are compared with a traditional content-based recommendation model, considering user satisfaction, novelty, and computational efficiency. LLMs achieved satisfaction rates of up to \textit{89{,}32\%}, indicating their promising potential in music recommendation systems.
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