Across the sciences, the statistical analysis of networks is central to the production of knowledge on relational phenomena. Because of their ability to model the structural generation of networks based on both endogenous and exogenous factors, exponential random graph models are a ubiquitous means of analysis. However, they are limited by an inability to model networks with valued edges. We address this problem by introducing a class of generalized exponential random graph models capable of modeling networks whose edges have continuous values (bounded or unbounded), thus greatly expanding the scope of networks applied researchers can subject to statistical analysis
Exponential random graph models (ERGMs) are increasingly applied to observed network data and are ce...
Random graphs, where the connections between nodes are considered random variables, have wide applic...
A brief introduction to statistical models for complete network data is presented. An example is pro...
Across the sciences, the statistical analysis of networks is central to the production of knowledge ...
The most promising class of statistical models for expressing structural properties of social networ...
Methods for descriptive network analysis have reached statistical maturity and general acceptance ac...
Random graphs, where the presence of connections between nodes are considered random variables, have...
This article provides an introductory summary to the formulation and application of exponential rand...
"This book provides an account of the theoretical and methodological underpinnings of exponential ra...
Exponential Family Random Graph Models (ERGM) are increasingly used in the study of social networks....
Exponential-family random graph models (ERGMs) provide a prin-cipled and flexible way to model and s...
This article reviews new specifications for exponential random graph models proposed by Snijders et ...
Summary. Random graphs, where the connections between nodes are considered random variables, have wi...
This article reviews new specifications for exponential random graph models proposed by Snijders et ...
For exponential random graph models, under quite general conditions, it is proved that induced subgr...
Exponential random graph models (ERGMs) are increasingly applied to observed network data and are ce...
Random graphs, where the connections between nodes are considered random variables, have wide applic...
A brief introduction to statistical models for complete network data is presented. An example is pro...
Across the sciences, the statistical analysis of networks is central to the production of knowledge ...
The most promising class of statistical models for expressing structural properties of social networ...
Methods for descriptive network analysis have reached statistical maturity and general acceptance ac...
Random graphs, where the presence of connections between nodes are considered random variables, have...
This article provides an introductory summary to the formulation and application of exponential rand...
"This book provides an account of the theoretical and methodological underpinnings of exponential ra...
Exponential Family Random Graph Models (ERGM) are increasingly used in the study of social networks....
Exponential-family random graph models (ERGMs) provide a prin-cipled and flexible way to model and s...
This article reviews new specifications for exponential random graph models proposed by Snijders et ...
Summary. Random graphs, where the connections between nodes are considered random variables, have wi...
This article reviews new specifications for exponential random graph models proposed by Snijders et ...
For exponential random graph models, under quite general conditions, it is proved that induced subgr...
Exponential random graph models (ERGMs) are increasingly applied to observed network data and are ce...
Random graphs, where the connections between nodes are considered random variables, have wide applic...
A brief introduction to statistical models for complete network data is presented. An example is pro...