All-domain Moveline Evolution Network for Click-Through Rate Prediction
Chen Gao, Zixin Zhao, Lv Shao, Tong Liu

TL;DR
This paper introduces AMEN, a novel network that models scene-level user movelines for CTR prediction, addressing heterogeneity and temporal alignment challenges, resulting in significant online performance gains.
Contribution
The paper proposes the All-domain Moveline Evolution Network (AMEN), pioneering scene-level modeling of user behaviors for improved CTR prediction.
Findings
Achieved +11.6% increase in CTCVR in online A/B tests.
Transfers item and scene interactions into homogeneous representation spaces.
Introduces Temporal Sequential Pairwise (TSP) mechanism for nuanced behavior association.
Abstract
E-commerce app users exhibit behaviors that are inherently logically consistent. A series of multi-scenario user behaviors interconnect to form the scene-level all-domain user moveline, which ultimately reveals the user's true intention. Traditional CTR prediction methods typically focus on the item-level interaction between the target item and the historically interacted items. However, the scene-level interaction between the target item and the user moveline remains underexplored. There are two challenges when modeling the interaction with preceding all-domain user moveline: (i) Heterogeneity between items and scenes: Unlike traditional user behavior sequences that utilize items as carriers, the user moveline utilizes scenes as carriers. The heterogeneity between items and scenes complicates the process of aligning interactions within a unified representation space. (ii) Temporal…
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