推荐系统的非线性交互深度分解机器网络

Chuchu Yu, Xinmei Yang, Han Jiang
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引用次数: 1

摘要

近年来,利用用户的历史行为特征来预测点击率已经成为推荐系统研究的一个重点。尽管CTR模型的理论和实验研究已经大量增加,但大多数模型都集中在线性特征相互作用上;然而,现实世界中的关键用户特征是通过非线性特征隐含地发现的。在本文中,我们提出了一个新的模型,集成了线性和非线性特征交互的优点。我们的推荐系统(DFNR)模型通过设计一个新的非线性交互(nl -交互)层来识别非线性特征交互。我们还结合了一个比其他CTR模型更深的多层感知器(MLP),它产生了关于高阶特征相互作用的更准确的信息。所提模型中的MLP是独特的,因为我们使用残差结构来纠正由更深层次的网络结构引起的问题。研究结果表明,与其他模型相比,DFNR模型在CTR预测任务上表现更好。结果表明,基于非线性交互层和深层神经网络结构的模型是有效的。
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Deep Factorization Machines network with Non-linear interaction for Recommender System
In recent years, leveraging the characteristics of users’ historical behavior to predict click-through rates (CTRs) has become a key point of interest in studies of recommender systems. Although theoretical and experimental investigations of CTR models have increased substantially, most models focus on linear feature interaction; however, crucial user characteristics in the real world are discovered implicitly by non-linear features. In this paper, we propose a novel model that integrates the advantages of linear and non-linear feature interaction. Our deep factorization machines network with non-linear interaction for recommend systems (DFNR) model identifies non-linear feature interactions by designing a new Non-linear interaction (NL-interaction) layer. We also incorporate a deeper multilayer perceptron (MLP) than other CTR models, which yields more accurate information about higher-order feature interactions. The MLP in the proposed model is unique because we use the residual structure to correct problems caused by a deeper network structure. Findings show that our DFNR model performs better on a CTR prediction task compared to other models. Results demonstrate the effective-ness of our model based on its non-linear interaction layer and deeper neural network architecture.
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