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Papers/DeepFM: A Factorization-Machine based Neural Network for C...

DeepFM: A Factorization-Machine based Neural Network for CTR Prediction

Huifeng Guo, Ruiming Tang, Yunming Ye, Zhenguo Li, Xiuqiang He

2017-03-13Feature EngineeringClick-Through Rate PredictionRecommendation Systems
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Abstract

Learning sophisticated feature interactions behind user behaviors is critical in maximizing CTR for recommender systems. Despite great progress, existing methods seem to have a strong bias towards low- or high-order interactions, or require expertise feature engineering. In this paper, we show that it is possible to derive an end-to-end learning model that emphasizes both low- and high-order feature interactions. The proposed model, DeepFM, combines the power of factorization machines for recommendation and deep learning for feature learning in a new neural network architecture. Compared to the latest Wide \& Deep model from Google, DeepFM has a shared input to its "wide" and "deep" parts, with no need of feature engineering besides raw features. Comprehensive experiments are conducted to demonstrate the effectiveness and efficiency of DeepFM over the existing models for CTR prediction, on both benchmark data and commercial data.

Results

TaskDatasetMetricValueModel
Click-Through Rate PredictionBing NewsAUC0.8376DeepFM
Click-Through Rate PredictionBing NewsLog Loss0.2671DeepFM
Click-Through Rate PredictionKKBoxAUC0.8531DeepFM
Click-Through Rate PredictionCompany*AUC0.8715DeepFM
Click-Through Rate PredictionCompany*Log Loss0.02618DeepFM
Click-Through Rate PredictionDianpingAUC0.8481DeepFM
Click-Through Rate PredictionDianpingLog Loss0.3333DeepFM
Click-Through Rate PredictionMovieLens 20MAUC0.7324DeepFM
Click-Through Rate PredictionCriteoAUC0.8007DeepFM
Click-Through Rate PredictionCriteoLog Loss0.45083DeepFM
Click-Through Rate PredictionAmazonAUC0.8683DeepFM

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