Fairness Through Domain Awareness: Mitigating Popularity Bias For Music Discovery

08/28/2023
by   Rebecca Salganik, et al.
0

As online music platforms grow, music recommender systems play a vital role in helping users navigate and discover content within their vast musical databases. At odds with this larger goal, is the presence of popularity bias, which causes algorithmic systems to favor mainstream content over, potentially more relevant, but niche items. In this work we explore the intrinsic relationship between music discovery and popularity bias. To mitigate this issue we propose a domain-aware, individual fairness-based approach which addresses popularity bias in graph neural network (GNNs) based recommender systems. Our approach uses individual fairness to reflect a ground truth listening experience, i.e., if two songs sound similar, this similarity should be reflected in their representations. In doing so, we facilitate meaningful music discovery that is robust to popularity bias and grounded in the music domain. We apply our BOOST methodology to two discovery based tasks, performing recommendations at both the playlist level and user level. Then, we ground our evaluation in the cold start setting, showing that our approach outperforms existing fairness benchmarks in both performance and recommendation of lesser-known content. Finally, our analysis explains why our proposed methodology is a novel and promising approach to mitigating popularity bias and improving the discovery of new and niche content in music recommender systems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/23/2020

Addressing the Multistakeholder Impact of Popularity Bias in Recommendation Through Calibration

Popularity bias is a well-known phenomenon in recommender systems: popul...
research
03/25/2020

Unfair Exposure of Artists in Music Recommendation

Fairness in machine learning has been studied by many researchers. In pa...
research
08/19/2022

Exploring Popularity Bias in Music Recommendation Models and Commercial Steaming Services

Popularity bias is the idea that a recommender system will unduly favor ...
research
07/27/2020

Recommending Podcasts for Cold-Start Users Based on Music Listening and Taste

Recommender systems are increasingly used to predict and serve content t...
research
06/23/2017

Toward Faultless Content-Based Playlists Generation for Instrumentals

This study deals with content-based musical playlists generation focused...
research
05/18/2023

Machine Learning Recommendation System For Health Insurance Decision Making In Nigeria

The uptake of health insurance has been poor in Nigeria, a significant s...
research
09/08/2022

Analyzing the Effect of Sampling in GNNs on Individual Fairness

Graph neural network (GNN) based methods have saturated the field of rec...

Please sign up or login with your details

Forgot password? Click here to reset