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Continuous-Time Relationship Prediction in Dynamic Heterogeneous Information Networks

机译:动态异构信息网络中的连续时间关系预测

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Online social networks, World Wide Web, media, and technological networks, and other types of so-called Information networks are ubiquitous nowadays. These information networks are inherently heterogeneous and dynamic. They are heterogeneous as they consist of multi-typed objects and relations, and they are dynamic as they are constantly evolving over time. One of the challenging issues in such heterogeneous and dynamic environments is to forecast those relationships in the network that will appear in the future. In this article, we try to solve the problem of continuous-time relationship prediction in dynamic and heterogeneous information networks. This implies predicting the time it takes for a relationship to appear in the future, given its features that have been extracted by considering both heterogeneity and temporal dynamics of the underlying network. To this end, we first introduce a feature extraction framework that combines the power of meta-path-based modeling and recurrent neural networks to effectively extract features suitable for relationship prediction regarding heterogeneity and dynamicity of the networks. Next, we propose a supervised non-parametric approach, called Non-Parametric Generalized Linear Model (NIP-GLM), which infers the hidden underlying probability distribution of the relationship building time given its features. We then present a learning algorithm to train NP-GLM and an inference method to answer time-related queries. Extensive experiments conducted on synthetic data and three real-world datasets, namely Delicious, MovieLens, and DBLP, demonstrate the effectiveness of NP-am in solving continuous-time relationship prediction problem vis-a-vis competitive baselines.
机译:在线社交网络,万维网,媒体和技术网络,以及现在普遍存在的所谓的信息网络。这些信息网络本质上是异构和动态的。它们是异构的,因为它们由多键入的物体和关系组成,它们是动态的,因为它们不断发展随着时间的推移。这种异构和动态环境中的一个具有挑战性的问题是预测将在未来出现的网络中的那些关系。在本文中,我们尝试解决动态和异构信息网络中连续时间关系预测的问题。这意味着,考虑到通过考虑底层网络的异质性和时间动态来提取的特征,预测关系所需的时间所需的时间。为此,我们首先介绍一个特征提取框架,该特征提取框架结合了基于元路径的建模和经常性神经网络的功率,以有效提取适合于关于网络的异构性和动力学的关系预测的特征。接下来,我们提出了一种被称为非参数通知线性模型(NIP-GLM)的监督非参数方法,其在其特征上揭示了关系建筑时间的隐藏潜在的概率分布。然后,我们提出了一种训练NP-GLM的学习算法和推理方法来应答时间相关的查询。对合成数据和三个现实世界数据集进行的广泛实验,即美味,Movielens和DBLP,证明了NP-AM在求解连续时间关系预测问题VIS-A-VIS竞争基础上的有效性。

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