Exploiting Negative Preference in Content-based Music Recommendation with Contrastive Learning
Minju Park,
Kyogu Lee
Abstract:Advanced music recommendation systems are being introduced along with the development of machine learning. However, it is essential to design a music recommendation system that can increase user satisfaction by understanding users' music tastes, not by the complexity of models. Although several studies related to music recommendation systems exploiting negative preferences have shown performance improvements, there was a lack of explanation on how they led to better recommendations. In this work, we analyze th… Show more
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