2024
DOI: 10.7717/peerj-cs.1764
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Disentangled self-attention neural network based on information sharing for click-through rate prediction

Yingqi Wang,
Huiqin Ji,
Xin He
et al.

Abstract: With the exponential growth of network resources, recommendation systems have become successful at combating information overload. In intelligent recommendation systems, the prediction of click-through rates (CTR) plays a crucial role. Most CTR models employ a parallel network architecture to successfully capture explicit and implicit feature interactions. However, the existing models ignore two aspects. One limitation observed in most models is that they focus only on the interaction of paired term features, … Show more

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