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Infer As You Train: A Symmetric Paradigm of Masked Generative for Click-Through Rate Prediction

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Generative models are increasingly being explored in click-through rate (CTR) prediction field to overcome the limitations of the conventional discriminative paradigm, which rely on a simple binary classification objective. However, existing generative models typically confine the generative paradigm to the training phase, primarily for representation learning. During online inference, they revert to a standard discriminative paradigm, failing to leverage their powerful generative capabilities to further improve prediction accuracy. This fundamental asymmetry between the training and inference phases prevents the generative paradigm from realizing its full potential. To address this limitation, we propose the Symmetric Masked Generative Paradigm for CTR prediction (SGCTR), a novel framework that establishes symmetry between the training and inference phases. Specifically, after acquiring generative capabilities by learning feature dependencies during training, SGCTR applies the generative capabilities during online inference to iteratively redefine the features of input samples, which mitigates the impact of noisy features and enhances prediction accuracy. Extensive experiments validate the superiority of SGCTR, demonstrating that applying the generative paradigm symmetrically across both training and inference significantly unlocks its power in CTR prediction.

Moyu Zhang, Yujun Jin, Yun Chen, Jinxin Hu, Yu Zhang, Xiaoyi Zeng• 2025

Related benchmarks

TaskDatasetResultRank
Click-Through Rate PredictionIndustrial
AUC79.56
120
Click-Through Rate PredictionAvazu
Logloss0.4378
60
Click-Through Rate PredictionCriteo
AUC0.8031
44
Click-Through Rate PredictionKDD12
AUC0.8118
39
Click-Through Rate PredictionAMAZON
AUC0.8139
11
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