Emergent Mind

Song Recommendation with Non-Negative Matrix Factorization and Graph Total Variation

(1601.01892)
Published Jan 8, 2016 in stat.ML , cs.IR , cs.LG , and physics.data-an

Abstract

This work formulates a novel song recommender system as a matrix completion problem that benefits from collaborative filtering through Non-negative Matrix Factorization (NMF) and content-based filtering via total variation (TV) on graphs. The graphs encode both playlist proximity information and song similarity, using a rich combination of audio, meta-data and social features. As we demonstrate, our hybrid recommendation system is very versatile and incorporates several well-known methods while outperforming them. Particularly, we show on real-world data that our model overcomes w.r.t. two evaluation metrics the recommendation of models solely based on low-rank information, graph-based information or a combination of both.

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