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From Feature Interaction to Feature Generation: A Generative Paradigm of CTR Prediction Models

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Click-Through Rate (CTR) prediction, a core task in recommendation systems, aims to estimate the probability of users clicking on items. Existing models predominantly follow a discriminative paradigm, which relies heavily on explicit interactions between raw ID embeddings. However, this paradigm inherently renders them susceptible to two critical issues: embedding dimensional collapse and information redundancy, stemming from the over-reliance on feature interactions \emph{over raw ID embeddings}. To address these limitations, we propose a novel \emph{Supervised Feature Generation (SFG)} framework, \emph{shifting the paradigm from discriminative ``feature interaction" to generative ``feature generation"}. Specifically, SFG comprises two key components: an \emph{Encoder} that constructs hidden embeddings for each feature, and a \emph{Decoder} tasked with regenerating the feature embeddings of all features from these hidden representations. Unlike existing generative approaches that adopt self-supervised losses, we introduce a supervised loss to utilize the supervised signal, \ie, click or not, in the CTR prediction task. This framework exhibits strong generalizability: it can be seamlessly integrated with most existing CTR models, reformulating them under the generative paradigm. Extensive experiments demonstrate that SFG consistently mitigates embedding collapse and reduces information redundancy, while yielding substantial performance gains across various datasets and base models. The code is available at https://github.com/USTC-StarTeam/GE4Rec.

Mingjia Yin, Junwei Pan, Hao Wang, Ximei Wang, Shangyu Zhang, Jie Jiang, Defu Lian, Enhong Chen• 2025

Related benchmarks

TaskDatasetResultRank
CTR PredictionCriteo
AUC0.8154
309
CTR PredictionAvazu
AUC79.451
171
Click-Through Rate PredictionIndustrial
AUC79.34
120
Click-Through Rate PredictionAvazu
Logloss0.4391
60
CTR PredictionMovieLens
AUC89.39
55
Click-Through Rate PredictionCriteo
AUC0.8003
44
Click-Through Rate PredictionKDD12
AUC0.8091
39
CTR PredictionAmazon-Fashion
AUC0.745
16
CTR PredictionAmazon Instrument
AUC0.7159
16
Click-Through Rate PredictionAMAZON
AUC0.8118
11
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