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Title Time-Aware Music Recommender Systems: Modeling the Evolution of Implicit User Preferences and User Listening Habits in A Collaborative Filtering Approach
Authors Sanchez-Moreno, D. , Zheng, J. , María N. Moreno García
Summary Online streaming services have become the most popular way of listening to music. The majority of these services are endowed with recommendation mechanisms that help users to discover songs and artists that may interest them from the vast amount of music available. However, many are not reliable as they may not take into account contextual aspects or the ever-evolving user behavior. Therefore, it is necessary to develop systems that consider these aspects. In the field of music, time is one of the most important factors influencing user preferences and managing its effects, and is the motivation behind the work presented in this paper. Here, the temporal information regarding when songs are played is examined. The purpose is to model both the evolution of user preferences in the form of evolving implicit ratings and user listening behavior. In the collaborative filtering method proposed in this work, daily listening habits are captured in order to characterize users and provide them with more reliable recommendations. The results of the validation prove that this approach outperforms other methods in generating both context-aware and context-free recommendations.
Magazine name Applied Sciences
Magazine number 10 (15). Article ID: 5324
Initial page 1
End page 32
Year 2020
Volume 10
ISSN
Last impact factors 2.474 (2019)
DOI 10.3390/app10155324
Link https://www.mdpi.com/2076-3417/10/15/5324
Keywords time-aware music recommender systems; TARS; CARS; implicit ratings; collaborative filtering
Number of appointments
File applsci-10-05324.pdf
Bibtex