2021
DOI: 10.48550/arxiv.2112.10220
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Sequential Estimation of Temporally Evolving Latent Space Network Models

Abstract: In this article we focus on dynamic network data which describe interactions among a fixed population through time. We model this data using the latent space framework, in which the probability of a connection forming is expressed as a function of low-dimensional latent coordinates associated with the nodes, and consider sequential estimation of model parameters via Sequential Monte Carlo (SMC) methods. In this setting, SMC is a natural candidate for estimation which offers greater scalability than existing ap… Show more

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