AI RESEARCH
FEDIN: Frequency-Enhanced Deep Interest Network for Click-Through Rate Prediction
arXiv CS.AI
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ArXi:2605.01726v1 Announce Type: cross Sequential recommendation models often struggle to capture latent periodic patterns in user interests, primarily due to the noise inherent in time-domain behavioral data. While frequency-domain analysis offers a global perspective to address this, existing approaches typically treat user sequences in isolation, overlooking the crucial context of the target item. In this work, we present a novel empirical observation: user attention scores exhibit distinct spectral entropy distributions when conditioned on positive versus negative target items.