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A Latent Parameter Node-Centric Model for Spatial Networks

机译:空间网络的潜在参数节点中心模型

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摘要

Spatial networks, in which nodes and edges are embedded in space, play a vital role in the study of complex systems. For example, many social networks attach geo-location information to each user, allowing the study of not only topological interactions between users, but spatial interactions as well. The defining property of spatial networks is that edge distances are associated with a cost, which may subtly influence the topology of the network. However, the cost function over distance is rarely known, thus developing a model of connections in spatial networks is a difficult task. In this paper, we introduce a novel model for capturing the interaction between spatial effects and network structure. Our approach represents a unique combination of ideas from latent variable statistical models and spatial network modeling. In contrast to previous work, we view the ability to form long/short-distance connections to be dependent on the individual nodes involved. For example, a node's specific surroundings (e.g. network structure and node density) may make it more likely to form a long distance link than other nodes with the same degree. To capture this information, we attach a latent variable to each node which represents a node's spatial reach. These variables are inferred from the network structure using a Markov Chain Monte Carlo algorithm. We experimentally evaluate our proposed model on 4 different types of real-world spatial networks (e.g. transportation, biological, infrastructure, and social). We apply our model to the task of link prediction and achieve up to a 35% improvement over previous approaches in terms of the area under the ROC curve. Additionally, we show that our model is particularly helpful for predicting links between nodes with low degrees. In these cases, we see much larger improvements over previous models.
机译:节点和边嵌入空间的空间网络在复杂系统的研究中起着至关重要的作用。例如,许多社交网络将地理位置信息附加到每个用户,从而不仅可以研究用户之间的拓扑交互,还可以研究空间交互。空间网络的定义属性是边缘距离与成本相关联,这可能会微妙地影响网络的拓扑。然而,关于距离的成本函数鲜为人知,因此在空间网络中建立连接模型是一项艰巨的任务。在本文中,我们介绍了一种捕获空间效应与网络结构之间相互作用的新颖模型。我们的方法代表了潜在变量统计模型和空间网络建模思想的独特组合。与以前的工作相比,我们认为形成长/短距离连接的能力取决于所涉及的各个节点。例如,节点的特定环境(例如,网络结构和节点密度)可能使其比具有相同程度的其他节点更可能形成长距离链路。为了捕获此信息,我们将一个潜在变量附加到表示节点的空间范围的每个节点上。这些变量是使用马尔可夫链蒙特卡罗算法从网络结构推断出来的。我们在4种不同类型的现实世界空间网络(例如交通,生物,基础设施和社会)上实验性地评估了我们提出的模型。我们将模型应用于链接预测任务,并在ROC曲线下的面积方面比以前的方法提高了35%。此外,我们证明了我们的模型对于预测低度节点之间的链接特别有用。在这些情况下,我们看到比以前的模型有更大的改进。

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