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Open AccessProceedings ArticleDOI

DeepFM: a factorization-machine based neural network for CTR prediction

TLDR
This paper shows that it is possible to derive an end-to-end learning model that emphasizes both low- and high-order feature interactions, and combines the power of factorization machines for recommendation and deep learning for feature learning in a new neural network architecture.
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.

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Deep Reinforcement Learning for Online Advertising in Recommender Systems

TL;DR: This paper develops a reinforcement learning based framework that can continuously update its advertising strategies and maximize reward in the long run and demonstrates the effectiveness of the proposed framework based on real-world data.
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Learning Graph Meta Embeddings for Cold-Start Ads in Click-Through Rate Prediction

TL;DR: This article proposed Graph Meta Embedding (GME) models that can rapidly learn how to generate desirable initial embeddings for new ad IDs based on graph neural networks and meta learning.
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Interaction-aware Factorization Machines for Recommender Systems

TL;DR: IFM introduces more structured control and learns feature interaction importance in a stratified manner, which allows for more leverage in tweaking the interactions on both feature-wise and field-wise levels, and a sampling scheme is developed to select interactions based on the field aspect importance.
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Fine-Grained Deep Knowledge-Aware Network for News Recommendation with Self-Attention

TL;DR: This work introduces a novel self-attention based mechanism in news recommendation that outperforms better results than previous start-of-art recommendation models.
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FuxiCTR: An Open Benchmark for Click-Through Rate Prediction

TL;DR: This paper presents an open benchmark (namely FuxiCTR) for reproducible research and provides a rigorous comparison of different models for CTR prediction, showing that many models have smaller differences than expected and sometimes are even inconsistent with what reported in the literature.
References
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Proceedings ArticleDOI

Factorization Machines

TL;DR: Factorization Machines (FM) are introduced which are a new model class that combines the advantages of Support Vector Machines (SVM) with factorization models and can mimic these models just by specifying the input data (i.e. the feature vectors).
Proceedings ArticleDOI

Restricted Boltzmann machines for collaborative filtering

TL;DR: This paper shows how a class of two-layer undirected graphical models, called Restricted Boltzmann Machines (RBM's), can be used to model tabular data, such as user's ratings of movies, and demonstrates that RBM's can be successfully applied to the Netflix data set.
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