2019
DOI: 10.7763/ijcte.2019.v11.1238
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Music Recommendation for Individual Music Preference

Abstract: Over the last several years, music streaming services have come in handy in our lives. Apple Music, Spotify, and Google Play Music is one of the most commonly used music streaming services. There are a number of studies about music recommendation system, one of the functions in music streaming services. Most of studies about music recommendation system express music features using music information extracted from song components. The way to express music features and to come up recommendations out of music fea… Show more

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Cited by 5 publications
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“…These approaches are essential for delivering precise and personalized music recommendations, thereby enriching the overall music-listening experience. Item-oriented similarity methods encompass techniques like content-based filtering, which directly compares the similarity value of a song with the user's favorite, predicting songs with high similarity values [69]. Content-based recommendation algorithms further suggest items with significant similarity based on historical selection behaviors that users have appreciated [70].…”
Section: K User and Item-orientedmentioning
confidence: 99%
“…These approaches are essential for delivering precise and personalized music recommendations, thereby enriching the overall music-listening experience. Item-oriented similarity methods encompass techniques like content-based filtering, which directly compares the similarity value of a song with the user's favorite, predicting songs with high similarity values [69]. Content-based recommendation algorithms further suggest items with significant similarity based on historical selection behaviors that users have appreciated [70].…”
Section: K User and Item-orientedmentioning
confidence: 99%