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Learning to Rank For Push Notifications Using Pairwise Expected Regret

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arxiv 2201.07681 v1 pith:M5A7GMRA submitted 2022-01-19 cs.IR cs.LG

Learning to Rank For Push Notifications Using Pairwise Expected Regret

classification cs.IR cs.LG
keywords rankingchallengesexpectedlearninglossmethodsnotificationspairwise
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Listwise ranking losses have been widely studied in recommender systems. However, new paradigms of content consumption present new challenges for ranking methods. In this work we contribute an analysis of learning to rank for personalized mobile push notifications and discuss the unique challenges this presents compared to traditional ranking problems. To address these challenges, we introduce a novel ranking loss based on weighting the pairwise loss between candidates by the expected regret incurred for misordering the pair. We demonstrate that the proposed method can outperform prior methods both in a simulated environment and in a production experiment on a major social network.

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