Abstract

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.

Highlights

  • Network analysis has been successfully applied to several scientific fields of study including sociology [1,2,3], information science [4,5], and ecology [6,7]

  • We investigate the variable effects of distance on individual nodes and how this influences network topology

  • Our experiments show that our model achieves up to 35% improvements over other methods in the task of link prediction

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Summary

Introduction

Network analysis has been successfully applied to several scientific fields of study including sociology [1,2,3], information science [4,5], and ecology [6,7]. The spatial configuration of nodes is paramount in analyzing a network as it plays a significant role in the formation and maintenance of links. Despite the important relationship between space and structure, many models and analyses are limited to only the network topology. Such models fail to capture important spatial properties inherent in the data [8,9,10]. In transportation networks, it is more economical to create short links between nodes [11,12]. Users in a social network are more likely to form links based on physically proximity because they have more interaction opportunities [3,13]

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