TL;DR
This paper introduces TGIN, a novel framework that leverages triangle structures in item-item graphs to better understand user interests and improve click-through rate prediction, especially for sparse or diverse behaviors.
Contribution
TGIN utilizes triangle properties in item-item graphs to capture true user motivations and enhance interest exploration beyond popular items.
Findings
TGIN outperforms existing methods on public datasets.
The framework effectively captures user motivation for clicks.
TGIN improves interest diversity and exploration in CTR prediction.
Abstract
Click-through rate prediction is a critical task in online advertising. Currently, many existing methods attempt to extract user potential interests from historical click behavior sequences. However, it is difficult to handle sparse user behaviors or broaden interest exploration. Recently, some researchers incorporate the item-item co-occurrence graph as an auxiliary. Due to the elusiveness of user interests, those works still fail to determine the real motivation of user click behaviors. Besides, those works are more biased towards popular or similar commodities. They lack an effective mechanism to break the diversity restrictions. In this paper, we point out two special properties of triangles in the item-item graphs for recommendation systems: Intra-triangle homophily and Inter-triangle heterophiy. Based on this, we propose a novel and effective framework named Triangle Graph…
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