There has been a recent increase in the use of network models for representing interactions and structure in many complex systems. In this thesis we introduce the use of spatial process models for the statistical analysis of networks, emphasizing applications to social networks. The first methodology we propose is the latent socio-spatial process model. In the spirit of a random effects model, pairwise connections are assumed to be conditionally independent given a latent spatial process evaluated at observed points in a covariate space. This smooths the relationship between connections and covariates in a sample network using relatively few parameters, so the probabilities of connection for a population can be inferred. The second model th...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics & Co...
Many inherently spatial systems have been represented using networks. This thesis contributes to the...
The study of complex networks, and in particular of social networks, has mostly concentrated on rela...
The study of social networks—where people are located, geographically, and how they might be connect...
This paper focuses on how to extend the exponential random graph models to take into account the geo...
Spatial networks, in which nodes and edges are embedded in space, play a vital role in the study of ...
Social network data is generally incomplete with missing information about nodes and their interacti...
In this paper different models for social networks are reviewed. Two models which allow for spatial ...
In this work we propose a new model for the generation of social networks that includes their often ...
The role of location is central to spatially integrated social science in which the focus is to enha...
Despite increased interest across a range of scientific applications in modeling and understanding s...
We consider a model based clustering technique that directly accounts for network relations between ...
<p>Despite increased interest across a range of scientific applications in modeling and understandin...
Thesis (Ph.D.)--University of Washington, 2023Statistical machine learning techniques offer versatil...
International audienceIn most agent-based social simulation models, the issue of the organisation of...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics & Co...
Many inherently spatial systems have been represented using networks. This thesis contributes to the...
The study of complex networks, and in particular of social networks, has mostly concentrated on rela...
The study of social networks—where people are located, geographically, and how they might be connect...
This paper focuses on how to extend the exponential random graph models to take into account the geo...
Spatial networks, in which nodes and edges are embedded in space, play a vital role in the study of ...
Social network data is generally incomplete with missing information about nodes and their interacti...
In this paper different models for social networks are reviewed. Two models which allow for spatial ...
In this work we propose a new model for the generation of social networks that includes their often ...
The role of location is central to spatially integrated social science in which the focus is to enha...
Despite increased interest across a range of scientific applications in modeling and understanding s...
We consider a model based clustering technique that directly accounts for network relations between ...
<p>Despite increased interest across a range of scientific applications in modeling and understandin...
Thesis (Ph.D.)--University of Washington, 2023Statistical machine learning techniques offer versatil...
International audienceIn most agent-based social simulation models, the issue of the organisation of...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics & Co...
Many inherently spatial systems have been represented using networks. This thesis contributes to the...
The study of complex networks, and in particular of social networks, has mostly concentrated on rela...