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arxiv: 2004.13715 · v3 · pith:T5PW3G4R · submitted 2020-04-28 · cs.SI · cs.LG· stat.ML

Privacy-Aware Recommender Systems Challenge on Twitter's Home Timeline

Reviewed by Pith T0 review T1 audit T2 compute T3 formal T4 kernel pith:T5PW3G4Rrecord.jsonopen to challenge →

classification cs.SI cs.LGstat.ML
keywords twitteruseralongbeenchallengedatasetengagementshome
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Recommender systems constitute the core engine of most social network platforms nowadays, aiming to maximize user satisfaction along with other key business objectives. Twitter is no exception. Despite the fact that Twitter data has been extensively used to understand socioeconomic and political phenomena and user behaviour, the implicit feedback provided by users on Tweets through their engagements on the Home Timeline has only been explored to a limited extent. At the same time, there is a lack of large-scale public social network datasets that would enable the scientific community to both benchmark and build more powerful and comprehensive models that tailor content to user interests. By releasing an original dataset of 160 million Tweets along with engagement information, Twitter aims to address exactly that. During this release, special attention is drawn on maintaining compliance with existing privacy laws. Apart from user privacy, this paper touches on the key challenges faced by researchers and professionals striving to predict user engagements. It further describes the key aspects of the RecSys 2020 Challenge that was organized by ACM RecSys in partnership with Twitter using this dataset.

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