EVALUATING THE QUALITY OF PLAYLISTS BASED ON HAND-CRAFTED SAMPLES

The automated generation of playlists represents a particular type of the music recommendation problem with two special characteristics. First, the tracks of the list are usually consumed immediately at recommendation time; second, songs are listened to mostly in consecutive order so that the sequence of the recommended tracks can be relevant. A number of different approaches for playlist generation have been proposed in the literature. In this paper, we review the existing core approaches to playlist generation, discuss aspects of appropriate offline evaluation designs and report the results of a comparative evaluation based on different data sets. Based on the insights from these experiments, we propose a comparably simple and computationally tractable new baseline algorithm for future comparisons, which is based on track popularity and artist information and is competitive with more sophisticated techniques in our evaluation settings.

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