Evaluating Music Recommendations with Binary Feedback for Multiple Stakeholders
Abstract
High quality user feedback data is essential to training and evaluating a successful music recommendation system, particularly one that has to balance the needs of multiple stakeholders. Most existing music datasets suffer from noisy feedback and self-selection biases inherent in the data collected by music platforms. Using the Piki Music dataset of 500k ratings collected over a two-year time period, we evaluate the performance of classic recommendation algorithms on three important stakeholders: consumers, well-known artists and lesser-known artists. We show that a matrix factorization algorithm trained on both likes and dislikes performs significantly better compared to one trained only on likes for all three stakeholders.
Cite
@article{arxiv.2109.07692,
title = {Evaluating Music Recommendations with Binary Feedback for Multiple Stakeholders},
author = {Sasha Stoikov and Hongyi Wen},
journal= {arXiv preprint arXiv:2109.07692},
year = {2021}
}
Comments
Accepted by the MORS workshop at RecSys 2021