Print Email Facebook Twitter Contextual Personalized Re-Ranking of Music Recommendations through Audio Features Based User Preference Models Title Contextual Personalized Re-Ranking of Music Recommendations through Audio Features Based User Preference Models Author Gong, B. (TU Delft Electrical Engineering, Mathematics and Computer Science) Contributor Tintarev, N. (mentor) Houben, G.J.P.M. (graduation committee) Liem, C.C.S. (graduation committee) Degree granting institution Delft University of Technology Programme Computer Science | Data Science and Technology Date 2020-08-27 Abstract With advancements in Internet and technology, it has become increasingly easy for people to enjoy music. Users are able to access millions of songs through music streaming services like Spotify, Pandora, and Deezer. Access to such large catalogs created a need for relevant song recommendations. Music recommender systems assist users in finding the most relevant songs by consistently matching them with the user’s preference. Accurately representing these preferences is essential to creating accurate and effective song recommendations. User preferences are highly subjective in nature and change according to context (e.g., music that is suitable for running is not suitable for relaxing). Preferences for songs can be based on characteristics of high level audio features, such as tempo and valence.This thesis proposes a new contextual re-ranking algorithm, which belongs to the group of contextual post-filtering techniques, to leverage users’ contextual information. The algorithm uses two models, a global and personalized model, to model user preferences. These models use audio features to represent user preference in specific contextual conditions. The algorithm is able to re-rank any given music recommendation list. First, we analyze the correlation between audio features and contextual conditions. This analysis shows that the correlations are significant, thus audio features are suitable for representing user preference in contextual conditions. Thereafter, we implement and evaluate the re-ranking algorithm using accuracy metrics on the #NowPlaying-RS and InCarMusic datasets, using various initial recommender algorithms. Results show thereis merit in applying such a re-ranking algorithm to increase recommendation accuracy. The personalized model, given enough historical data, consistently outperforms the global model. Subject Music Recommender SystemsContextual Post-FilteringAudio FeaturesPersonalization To reference this document use: http://resolver.tudelft.nl/uuid:f0cd6b41-b314-4c03-8dcd-d751c11c80ce Part of collection Student theses Document type master thesis Rights © 2020 B. Gong Files PDF FINAL_Thesis_Report_Bonin ... 367308.pdf 4.37 MB Close viewer /islandora/object/uuid:f0cd6b41-b314-4c03-8dcd-d751c11c80ce/datastream/OBJ/view