We propose a family of statistical models for social network evolution over time, which represents an extension of Exponential Random Graph Models (ERGMs). Many of the methods for ERGMs are readily adapted for these models, including maximum likelihood estimation algorithms. We discuss models of this type and their properties, and give examples, as well as a demonstration of their use for hypothesis testing and classification. We believe our temporal ERG models represent a useful new framework for modeling time-evolving social networks, and rewiring networks from other domains such as gene regulation circuitry, and communication networks.</p
Social networks as a representation of relational data, often possess multiple types of dependency s...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
A plausible representation of relational information among entities in dynamic systems such as a liv...
We propose a family of statistical models for social network evolution over time, which represents ...
We propose a family of statistical models for social network evolution over time, which represents a...
Models of dynamic networks - networks that evolve over time - have manifold applications. We develop...
Models of dynamic networks — networks that evolve over time — have manifold applications. We develop...
Exponential random graph models (ERGMs) are increasingly applied to observed network data and are ce...
Thesis (Ph.D.)--University of Washington, 2015We address three aspects of statistical methodology in...
This article provides an introductory summary to the formulation and application of exponential rand...
The most promising class of statistical models for expressing structural properties of social networ...
"This book provides an account of the theoretical and methodological underpinnings of exponential ra...
Summary. Random graphs, where the connections between nodes are considered random variables, have wi...
Random graphs, where the connections between nodes are considered random variables, have wide applic...
The Exponential-family Random Graph Model (ERGM) is a powerful statistical model to represent the co...
Social networks as a representation of relational data, often possess multiple types of dependency s...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
A plausible representation of relational information among entities in dynamic systems such as a liv...
We propose a family of statistical models for social network evolution over time, which represents ...
We propose a family of statistical models for social network evolution over time, which represents a...
Models of dynamic networks - networks that evolve over time - have manifold applications. We develop...
Models of dynamic networks — networks that evolve over time — have manifold applications. We develop...
Exponential random graph models (ERGMs) are increasingly applied to observed network data and are ce...
Thesis (Ph.D.)--University of Washington, 2015We address three aspects of statistical methodology in...
This article provides an introductory summary to the formulation and application of exponential rand...
The most promising class of statistical models for expressing structural properties of social networ...
"This book provides an account of the theoretical and methodological underpinnings of exponential ra...
Summary. Random graphs, where the connections between nodes are considered random variables, have wi...
Random graphs, where the connections between nodes are considered random variables, have wide applic...
The Exponential-family Random Graph Model (ERGM) is a powerful statistical model to represent the co...
Social networks as a representation of relational data, often possess multiple types of dependency s...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
A plausible representation of relational information among entities in dynamic systems such as a liv...