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      DeepFM: An End-to-End Wide & Deep Learning Framework for CTR Prediction

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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 have a strong bias towards low- or high-order interactions, or rely on 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 framework, 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 raw feature input to both its "wide" and "deep" components, with no need of feature engineering besides raw features. DeepFM, as a general learning framework, can incorporate various network architectures in its deep component. In this paper, we study two instances of DeepFM where its "deep" component is DNN and PNN respectively, for which we denote as DeepFM-D and DeepFM-P. Comprehensive experiments are conducted to demonstrate the effectiveness of DeepFM-D and DeepFM-P over the existing models for CTR prediction, on both benchmark data and commercial data. We conduct online A/B test in Huawei App Market, which reveals that DeepFM-D leads to more than 10% improvement of click-through rate in the production environment, compared to a well-engineered LR model. We also covered related practice in deploying our framework in Huawei App Market.

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          Solving the apparent diversity-accuracy dilemma of recommender systems

          Recommender systems use data on past user preferences to predict possible future likes and interests. A key challenge is that while the most useful individual recommendations are to be found among diverse niche objects, the most reliably accurate results are obtained by methods that recommend objects based on user or object similarity. In this paper we introduce a new algorithm specifically to address the challenge of diversity and show how it can be used to resolve this apparent dilemma when combined in an elegant hybrid with an accuracy-focused algorithm. By tuning the hybrid appropriately we are able to obtain, without relying on any semantic or context-specific information, simultaneous gains in both accuracy and diversity of recommendations.
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            Fast context-aware recommendations with factorization machines

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              When Recurrent Neural Networks meet the Neighborhood for Session-Based Recommendation

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                Author and article information

                Journal
                11 April 2018
                Article
                1804.04950
                c90e404d-0527-43c3-9a7c-d178d8ad9e8a

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                14 pages. arXiv admin note: text overlap with arXiv:1703.04247
                cs.IR cs.LG stat.ML

                Information & Library science,Machine learning,Artificial intelligence
                Information & Library science, Machine learning, Artificial intelligence

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