2024
DOI: 10.1111/coin.12645
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GMINN: Gate‐enhanced multi‐space interaction neural networks for click‐through rate prediction

Xingyu Feng,
Xuekang Yang,
Boyun Zhou

Abstract: Click‐through rate (CTR) prediction is a pivotal challenge in recommendation systems. Existing models are prone to disturbances from noise and redundant features, hindering their ability to fully capture implicit and higher‐order feature interactions present in sparse feature data. Moreover, conventional dual‐tower models overlook the significance of layer‐level feature interactions. To address these limitations, this article introduces Gate‐enhanced Multi‐space Interactive Neural Networks (GMINN), a novel mod… Show more

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