The performance of recommender systems highly impacts both music streaming platform users and the artists providing music. As fairness is a fundamental value of human life, there is increasing pressure for these algorithmic decision-making processes to be fair as well. However, many factors make recommender systems prone to biases, resulting in unfair outcomes. Furthermore, several stakeholders are involved, who may all have distinct needs requiring different fairness considerations. While there is an increasing interest in research on recommender system fairness in general, the music domain has received relatively little attention. This mini review, therefore, outlines current literature on music recommender system fairness from the perspe...
Comunicació presentada a: Workshop on the Impact of Recommender Systems, ACM RecSys 2020 celebrat de...
Fairness in recommender systems has gained lots of attention, considering provider and system object...
Enabling non-discrimination for end-users of recommender systems by introducing consumer fairness is...
The performance of recommender systems highly impacts both music streaming platform users and the ar...
Our narrative literature review acknowledges that, although there is an increasing interest in recom...
Streaming services have become one of today's main sources of music consumption, with music recommen...
As streaming services have become a main channel for music consumption, they significantly impact va...
Recommender systems have the potential of helping users in finding relevant items in the online envi...
Comunicació presentada a: CHIIR '21, Conference on Human Information Interaction and Retrieval celeb...
As recommender systems play an important role in everyday life, there is an increasing pressure that...
As one of the most pervasive applications of machine learning, recommender systems are playing an im...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
The majority of music consumption nowadays takes place on music streaming platforms. Whichever artis...
Music streaming platforms are currently among the main sources of music consumption, and the embedde...
Music Recommender Systems (mRS) are designed to give personalised and meaning-ful recommendations of...
Comunicació presentada a: Workshop on the Impact of Recommender Systems, ACM RecSys 2020 celebrat de...
Fairness in recommender systems has gained lots of attention, considering provider and system object...
Enabling non-discrimination for end-users of recommender systems by introducing consumer fairness is...
The performance of recommender systems highly impacts both music streaming platform users and the ar...
Our narrative literature review acknowledges that, although there is an increasing interest in recom...
Streaming services have become one of today's main sources of music consumption, with music recommen...
As streaming services have become a main channel for music consumption, they significantly impact va...
Recommender systems have the potential of helping users in finding relevant items in the online envi...
Comunicació presentada a: CHIIR '21, Conference on Human Information Interaction and Retrieval celeb...
As recommender systems play an important role in everyday life, there is an increasing pressure that...
As one of the most pervasive applications of machine learning, recommender systems are playing an im...
There is an increasing focus on fairness in recommender systems, with a growing body of literature o...
The majority of music consumption nowadays takes place on music streaming platforms. Whichever artis...
Music streaming platforms are currently among the main sources of music consumption, and the embedde...
Music Recommender Systems (mRS) are designed to give personalised and meaning-ful recommendations of...
Comunicació presentada a: Workshop on the Impact of Recommender Systems, ACM RecSys 2020 celebrat de...
Fairness in recommender systems has gained lots of attention, considering provider and system object...
Enabling non-discrimination for end-users of recommender systems by introducing consumer fairness is...