Considering Durations and Replays to Improve Music Recommender Systems
Pierre Hanna

TL;DR
This paper investigates how listening durations and replays can be used to enhance music recommendation systems by better predicting user preferences and improving recommendation quality through implicit feedback and post-filtering techniques.
Contribution
It introduces a novel approach that incorporates listening durations and replays into music recommendation models, demonstrating improved recommendation accuracy and user satisfaction.
Findings
Neighborhood-based systems perform best with binary data.
Filtering recommendations based on durations and replays improves quality.
Post-filtering reduces unpleasant listening experiences.
Abstract
The consumption of music has its specificities in comparison with other media, especially in relation to listening durations and replays. Music recommendation can take these properties into account in order to predict the behaviours of the users. Their impact is investigated in this paper. A large database was thus created using logs collected on a streaming platform, notably collecting the listening times. The proposed study shows that a high proportion of the listening events implies a skip action, which may indicate that the user did not appreciate the track listened. Implicit like and dislike can be deduced from this information of durations and replays and can be taken into account for music recommendation and for the evaluation of music recommendation engines. A quantitative study as usually found in the literature confirms that neighborhood-based systems considering binary data…
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