Automatic Music Recommendation for Businesses : Using a two-stage Membership model for track recommendation

University essay from KTH/Skolan för elektroteknik och datavetenskap (EECS)

Abstract: This thesis proposes a two-stage recommendation system for providing music recommendations based on seed playlists as inputs. The goal is to help businesses find relevant and brand-fit music to play in their venues. The problem of recommending music using machine learning has been investigated quite a bit in both academia and the industry, with collaborative filtering and content-based filtering being the major approaches used. One of the difficulties of creating a recommendation system is how to evaluate it. In this thesis, both a quantitative and a qualitative evaluation are made to determine how well the results correspond to the actual quality of recommendations. The application of recommending music to businesses also poses different problems than a service directed at end consumers, mostly related to how many track recommendations are needed. A two-stage approach was used with Stage 1 producing candidates and a Stage 2 model using a neural network comparing five tracks from the playlist with a candidate was used to rank said candidates. The results show that the Stage 2 model has substantially better results in both the qualitative and quantitative evaluation compared to Stage 1. The quality of the recommendations from the whole system is not completely satisfactory, and some possible reasons for this are discussed, including improving the Stage 1 candidate generator (which was not modified in the scope of this thesis).  

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