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Main Authors: Kang, Sora, Lee, Mingu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.21189
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author Kang, Sora
Lee, Mingu
author_facet Kang, Sora
Lee, Mingu
contents The global rise of K-pop and the digital revolution have paved the way for new dimensions in artist recommendations. With platforms like Twitter serving as a hub for fans to interact, share and discuss K-pop, a vast amount of data is generated that can be analyzed to understand listener preferences. However, current recommendation systems often overlook K- pop's inherent diversity, treating it as a singular entity. This paper presents an innovative method that utilizes Natural Language Processing to analyze tweet content and discern individual listening habits and preferences. The mass of Twitter data is methodically categorized using fan clusters, facilitating granular and personalized artist recommendations. Our approach marries the advanced GPT-4 model with large-scale social media data, offering potential enhancements in accuracy for K-pop recommendation systems and promising an elevated, personalized fan experience. In conclusion, acknowledging the heterogeneity within fanbases and capitalizing on readily available social media data marks a significant stride towards advancing personalized music recommendation systems.
format Preprint
id arxiv_https___arxiv_org_abs_2503_21189
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An NLP-Driven Approach Using Twitter Data for Tailored K-pop Artist Recommendations
Kang, Sora
Lee, Mingu
Human-Computer Interaction
The global rise of K-pop and the digital revolution have paved the way for new dimensions in artist recommendations. With platforms like Twitter serving as a hub for fans to interact, share and discuss K-pop, a vast amount of data is generated that can be analyzed to understand listener preferences. However, current recommendation systems often overlook K- pop's inherent diversity, treating it as a singular entity. This paper presents an innovative method that utilizes Natural Language Processing to analyze tweet content and discern individual listening habits and preferences. The mass of Twitter data is methodically categorized using fan clusters, facilitating granular and personalized artist recommendations. Our approach marries the advanced GPT-4 model with large-scale social media data, offering potential enhancements in accuracy for K-pop recommendation systems and promising an elevated, personalized fan experience. In conclusion, acknowledging the heterogeneity within fanbases and capitalizing on readily available social media data marks a significant stride towards advancing personalized music recommendation systems.
title An NLP-Driven Approach Using Twitter Data for Tailored K-pop Artist Recommendations
topic Human-Computer Interaction
url https://arxiv.org/abs/2503.21189