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      Automatic Playlist Continuation through a Composition of Collaborative Filters

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          Abstract

          The RecSys Challenge 2018 focused on automatic playlist continuation, i.e., the task was to recommend additional music tracks for playlists based on the playlist's title and/or a subset of the tracks that it already contains. The challenge is based on the Spotify Million Playlist Dataset (MPD), containing the tracks and the metadata from one million real-life playlists. This paper describes the automatic playlist continuation solution of team Latte, which is based on a composition of collaborative filters that each capture different aspects of a playlist, where the optimal combination of those collaborative filters is determined using a Tree-structured Parzen Estimator (TPE). The solution obtained the 12th place out of 112 participating teams in the final leaderboard. Team Latte participated in the main track of the challenge of the RecSys Challenge 2018.

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          Current challenges and visions in music recommender systems research

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            Understanding choice overload in recommender systems

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              Author and article information

              Journal
              13 August 2018
              Article
              1808.04288
              c2140655-07d0-476b-b000-9f7d74c4151d

              http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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              cs.IR

              Information & Library science
              Information & Library science

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