scholarly journals Analyzing Item Popularity Bias of Music Recommender Systems: Are Different Genders Equally Affected?

2021 ◽  
Author(s):  
Oleg Lesota ◽  
Alessandro Melchiorre ◽  
Navid Rekabsaz ◽  
Stefan Brandl ◽  
Dominik Kowald ◽  
...  
2015 ◽  
Vol 219 ◽  
pp. 25-39 ◽  
Author(s):  
Ben Horsburgh ◽  
Susan Craw ◽  
Stewart Massie

Author(s):  
Thomas Hornung ◽  
Cai-Nicolas Ziegler ◽  
Simon Franz ◽  
Martin Przyjaciel-Zablocki ◽  
Alexander Schatzle ◽  
...  

Author(s):  
Zhiyong Cheng ◽  
Jialie Shen ◽  
Lei Zhu ◽  
Mohan Kankanhalli ◽  
Liqiang Nie

Users leave digital footprints when interacting with various music streaming services. Music play sequence, which contains rich information about personal music preference and song similarity, has been largely ignored in previous music recommender systems. In this paper, we explore the effects of music play sequence on developing effective personalized music recommender systems. Towards the goal, we propose to use word embedding techniques in music play sequences to estimate the similarity between songs. The learned similarity is then embedded into matrix factorization to boost the latent feature learning and discovery. Furthermore, the proposed method only considers the k-nearest songs (e.g., k = 5) in the learning process and thus avoids the increase of time complexity. Experimental results on two public datasets demonstrate that our methods could significantly improve the performance of both rating prediction and top-n recommendation tasks.


Author(s):  
Martin Pichl ◽  
Eva Zangerle

Abstract In the last decade, music consumption has changed dramatically as humans have increasingly started to use music streaming platforms. While such platforms provide access to millions of songs, the sheer volume of choices available renders it hard for users to find songs they like. Consequently, the task of finding music the user likes is often mitigated by music recommender systems, which aim to provide recommendations that match the user’s current context. Particularly in the field of music recommendation, adapting recommendations to the user’s current context is critical as, throughout the day, users listen to different music in numerous different contexts and situations. Therefore, we propose a multi-context-aware user model and track recommender system that jointly exploit information about the current situation and musical preferences of users. Our proposed system clusters users based on their situational context features and similarly, clusters music tracks based on their content features. By conducting a series of offline experiments, we show that by relying on Factorization Machines for the computation of recommendations, the proposed multi-context-aware user model successfully leverages interaction effects between user listening histories, situational, and track content information, substantially outperforming a set of baseline recommender systems.


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