Bridging Sequential and Contextual Features with a Dual-View of Fine-grained Core-Behaviors and Global Interest-Distribution
Yi Xu, Chaofan Fan, Moyu Zhang, Jinxin Hu, Jiahao Wang, Hao Zhang, Shizhun Wang, Yu Zhang, Xiaoyi Zeng

TL;DR
This paper introduces CDNet, a dual-view network that enhances CTR prediction by capturing both fine-grained user behaviors and overall interest distribution, improving interaction modeling without high computational costs.
Contribution
The paper proposes a novel dual-view interaction network that effectively models both detailed behaviors and global interest distribution in CTR prediction tasks.
Findings
CDNet outperforms existing models on multiple CTR datasets.
The dual-view approach captures both specific behaviors and overall interest.
Experimental results show improved prediction accuracy.
Abstract
Click-through rate (CTR) prediction tasks typically estimate the probability of a user clicking on a candidate item by modeling both user behavior sequence features and the item's contextual features, where the user behavior sequence is particularly critical as it dynamically reflects real-time shifts in user interest. Traditional CTR models often aggregate this dynamic sequence into a single vector before interacting it with contextual features. This approach, however, not only leads to behavior information loss during aggregation but also severely limits the model's capacity to capture interactions between contextual features and specific user behaviors, ultimately impairing its ability to capture fine-grained behavioral details and hindering models' prediction accuracy. Conversely, a naive approach of directly interacting with each user action with contextual features is…
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Taxonomy
TopicsRecommender Systems and Techniques · Gaze Tracking and Assistive Technology · Emotion and Mood Recognition
