Many existing statistical and machine learning tools for social network analysis focus on a single level of analysis. Methods designed for clustering optimize a global partition of the graph, whereas projection-based approaches (e.g., the latent space model in the statistics literature) represent in rich detail the roles of individuals. Many pertinent questions in sociology and economics, however, span multiple scales of analysis. Further, many questions involve comparisons across disconnected graphs that will, inevitably be of different sizes, either due to missing data or the inherent heterogeneity in real-world networks. We propose a class of network models that represent network structure on multiple scales and facilitate comparison acr...
This thesis investigates both how computational perspectives can improve our understanding of social...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Within large communities, individuals sparsely interact with each others but set a tight releationsh...
Many existing statistical and machine learning tools for social network analysis focus on a single l...
Abstract: Clusterwise p ∗ models are developed to detect differentially functioning network models a...
Social network data are often constructed by incorporating reports from multiple individuals. Howeve...
Social relationships consist of interactions along multiple dimensions. In social networks, this mea...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics & Co...
Social relationships consist of interactions along multiple dimensions. In social networks, this mea...
Today’s social and internet networks contain millions or even billions of nodes, and copious amounts...
Despite a long tradition in the study of graphs and relational data, for decades the analysis of com...
Social networks are organized into communities with dense internal connections, giving rise to high ...
Social networks are systems that are generally composed of multiple entities interacting with each o...
<p>Despite increased interest across a range of scientific applications in modeling and understandin...
Social networks are organized into communities with dense internal connections, giving rise to high ...
This thesis investigates both how computational perspectives can improve our understanding of social...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Within large communities, individuals sparsely interact with each others but set a tight releationsh...
Many existing statistical and machine learning tools for social network analysis focus on a single l...
Abstract: Clusterwise p ∗ models are developed to detect differentially functioning network models a...
Social network data are often constructed by incorporating reports from multiple individuals. Howeve...
Social relationships consist of interactions along multiple dimensions. In social networks, this mea...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics & Co...
Social relationships consist of interactions along multiple dimensions. In social networks, this mea...
Today’s social and internet networks contain millions or even billions of nodes, and copious amounts...
Despite a long tradition in the study of graphs and relational data, for decades the analysis of com...
Social networks are organized into communities with dense internal connections, giving rise to high ...
Social networks are systems that are generally composed of multiple entities interacting with each o...
<p>Despite increased interest across a range of scientific applications in modeling and understandin...
Social networks are organized into communities with dense internal connections, giving rise to high ...
This thesis investigates both how computational perspectives can improve our understanding of social...
Networks are an abstract representation of connections (the "edges") between entities (the "nodes")....
Within large communities, individuals sparsely interact with each others but set a tight releationsh...