Neural Tensor Factorization for Temporal Interaction Learning

X. Wu, Baoxu Shi, Yuxiao Dong, Chao Huang, N. Chawla
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引用次数: 56

Abstract

Neural collaborative filtering (NCF) and recurrent recommender systems (RRN) have been successful in modeling relational data (user-item interactions). However, they are also limited in their assumption of static or sequential modeling of relational data as they do not account for evolving users' preference over time as well as changes in the underlying factors that drive the change in user-item relationship over time. We address these limitations by proposing a Neural network based Tensor Factorization (NTF) model for predictive tasks on dynamic relational data. The NTF model generalizes conventional tensor factorization from two perspectives: First, it leverages the long short-term memory architecture to characterize the multi-dimensional temporal interactions on relational data. Second, it incorporates the multi-layer perceptron structure for learning the non-linearities between different latent factors. Our extensive experiments demonstrate the significant improvement in both the rating prediction and link prediction tasks on various dynamic relational data by our NTF model over both neural network based factorization models and other traditional methods.
时间交互学习的神经张量分解
神经协同过滤(NCF)和循环推荐系统(RRN)在关系数据(用户-项目交互)建模方面取得了成功。然而,它们对关系数据的静态或顺序建模的假设也受到限制,因为它们没有考虑用户偏好随时间的变化以及驱动用户-项目关系随时间变化的潜在因素的变化。我们通过提出基于神经网络的张量分解(NTF)模型来解决这些限制,该模型用于动态关系数据的预测任务。NTF模型从两个方面对传统的张量分解进行了推广:首先,它利用长短期记忆架构来表征关系数据上的多维时间交互。其次,结合多层感知器结构,学习不同潜在因素之间的非线性关系。我们的大量实验表明,与基于神经网络的因子分解模型和其他传统方法相比,我们的NTF模型在各种动态关系数据的评级预测和链接预测任务上都有显著的改进。
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