Recall-Augmented Ranking: Enhancing Click-Through Rate Prediction Accuracy with Cross-Stage Data
Click-through rate (CTR) prediction plays an indispensable role in online platforms. Numerous models have been proposed to capture users' shifting preferences by leveraging user behavior sequences. However, these historical sequences often suffer from severe homogeneity and scarcity compared to...
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Zusammenfassung: | Click-through rate (CTR) prediction plays an indispensable role in online
platforms. Numerous models have been proposed to capture users' shifting
preferences by leveraging user behavior sequences. However, these historical
sequences often suffer from severe homogeneity and scarcity compared to the
extensive item pool. Relying solely on such sequences for user representations
is inherently restrictive, as user interests extend beyond the scope of items
they have previously engaged with. To address this challenge, we propose a
data-driven approach to enrich user representations. We recognize user
profiling and recall items as two ideal data sources within the cross-stage
framework, encompassing the u2u (user-to-user) and i2i (item-to-item) aspects
respectively. In this paper, we propose a novel architecture named
Recall-Augmented Ranking (RAR). RAR consists of two key sub-modules, which
synergistically gather information from a vast pool of look-alike users and
recall items, resulting in enriched user representations. Notably, RAR is
orthogonal to many existing CTR models, allowing for consistent performance
improvements in a plug-and-play manner. Extensive experiments are conducted,
which verify the efficacy and compatibility of RAR against the SOTA methods. |
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DOI: | 10.48550/arxiv.2404.09578 |