A Latent Parameter Node-Centric Model for Spatial Networks
Nicholas D. Larusso, Brian E. Ruttenberg, and Ambuj Singh

TL;DR
This paper introduces a novel latent parameter node-centric model for spatial networks that captures individual node spatial reach, improving link prediction accuracy especially for low-degree nodes across various real-world network types.
Contribution
The paper presents a new model combining latent variables and spatial effects, allowing node-specific spatial reach to better predict links in spatial networks.
Findings
Up to 35% improvement in link prediction accuracy over previous methods.
Model performs particularly well for low-degree nodes.
Validated on four diverse real-world spatial networks.
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…
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