Automated Playlist Continuation with Apache PredictionIO

The Minrva project team, a software development research group based at the University of Illinois Library, developed a data-focused recommender system to participate in the creative track of the 2018 ACM RecSys Challenge, which focused on music recommendation. We describe here the large-scale data...

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Bibliographic Details
Main Author: Jim Hahn
Format: Article
Language:English
Published: Code4Lib 2018-11-01
Series:Code4Lib Journal
Online Access:https://journal.code4lib.org/articles/13850
Description
Summary:The Minrva project team, a software development research group based at the University of Illinois Library, developed a data-focused recommender system to participate in the creative track of the 2018 ACM RecSys Challenge, which focused on music recommendation. We describe here the large-scale data processing the Minrva team researched and developed for foundational reconciliation of the Million Playlist Dataset using external authority data on the web (e.g. VIAF, WikiData). The secondary focus of the research was evaluating and adapting the processing tools that support data reconciliation. This paper reports on the playlist enrichment process, indexing, and subsequent recommendation model developed for the music recommendation challenge.
ISSN:1940-5758