TL;DR
This paper introduces UBR4CTR, a framework that retrieves relevant user behaviors from long histories to improve CTR prediction, addressing efficiency and noise issues in sequential modeling.
Contribution
It proposes a learnable retrieval method to select relevant behaviors, enhancing CTR prediction accuracy without increasing system complexity.
Findings
Outperforms existing methods on large-scale datasets.
Effectively captures long-term user interests.
Low-cost deployment in industrial systems.
Abstract
Click-through rate (CTR) prediction plays a key role in modern online personalization services. In practice, it is necessary to capture user's drifting interests by modeling sequential user behaviors to build an accurate CTR prediction model. However, as the users accumulate more and more behavioral data on the platforms, it becomes non-trivial for the sequential models to make use of the whole behavior history of each user. First, directly feeding the long behavior sequence will make online inference time and system load infeasible. Second, there is much noise in such long histories to fail the sequential model learning. The current industrial solutions mainly truncate the sequences and just feed recent behaviors to the prediction model, which leads to a problem that sequential patterns such as periodicity or long-term dependency are not embedded in the recent several behaviors but in…
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