TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/AutoFIS: Automatic Feature Interaction Selection in Factor...

AutoFIS: Automatic Feature Interaction Selection in Factorization Models for Click-Through Rate Prediction

Bin Liu, Chenxu Zhu, Guilin Li, Wei-Nan Zhang, Jincai Lai, Ruiming Tang, Xiuqiang He, Zhenguo Li, Yong Yu

2020-03-25Click-Through Rate PredictionRecommendation Systems
PaperPDFCodeCodeCodeCodeCodeCode(official)

Abstract

Learning feature interactions is crucial for click-through rate (CTR) prediction in recommender systems. In most existing deep learning models, feature interactions are either manually designed or simply enumerated. However, enumerating all feature interactions brings large memory and computation cost. Even worse, useless interactions may introduce noise and complicate the training process. In this work, we propose a two-stage algorithm called Automatic Feature Interaction Selection (AutoFIS). AutoFIS can automatically identify important feature interactions for factorization models with computational cost just equivalent to training the target model to convergence. In the \emph{search stage}, instead of searching over a discrete set of candidate feature interactions, we relax the choices to be continuous by introducing the architecture parameters. By implementing a regularized optimizer over the architecture parameters, the model can automatically identify and remove the redundant feature interactions during the training process of the model. In the \emph{re-train stage}, we keep the architecture parameters serving as an attention unit to further boost the performance. Offline experiments on three large-scale datasets (two public benchmarks, one private) demonstrate that AutoFIS can significantly improve various FM based models. AutoFIS has been deployed onto the training platform of Huawei App Store recommendation service, where a 10-day online A/B test demonstrated that AutoFIS improved the DeepFM model by 20.3\% and 20.1\% in terms of CTR and CVR respectively.

Results

TaskDatasetMetricValueModel
Click-Through Rate PredictionCriteoAUC0.801AutoDeepFM(3rd)
Click-Through Rate PredictionCriteoLog Loss0.5405AutoDeepFM(3rd)

Related Papers

IP2: Entity-Guided Interest Probing for Personalized News Recommendation2025-07-18A Reproducibility Study of Product-side Fairness in Bundle Recommendation2025-07-18SGCL: Unifying Self-Supervised and Supervised Learning for Graph Recommendation2025-07-17Similarity-Guided Diffusion for Contrastive Sequential Recommendation2025-07-16Looking for Fairness in Recommender Systems2025-07-16Generative Click-through Rate Prediction with Applications to Search Advertising2025-07-15Journalism-Guided Agentic In-Context Learning for News Stance Detection2025-07-15LLM-Stackelberg Games: Conjectural Reasoning Equilibria and Their Applications to Spearphishing2025-07-12