Models with intractable likelihood functions arise in areas including network analysisand spatial statistics, especially those involving Gibbs random fields. Posterior parameter estimationin these settings is termed a doubly-intractable problem because both the likelihoodfunction and the posterior distribution are intractable. The comparison of Bayesian models isoften based on the statistical evidence, the integral of the un-normalised posterior distributionover the model parameters which is rarely available in closed form. For doubly-intractablemodels, estimating the evidence adds another layer of difficulty. Consequently, the selectionof the model that best describes an observed network among a collection of exponentialrandom graph models...
The most promising class of statistical models for expressing structural properties of social networ...
The most promising class of statistical models for expressing struc-tural properties of social netwo...
The most promising class of statistical models for expressing structural properties of social networ...
Models with intractable likelihood functions arise in areas including network analysisand spatial st...
<p>Models with intractable likelihood functions arise in areas including network analysis and spatia...
Exponential random graph models are a class of widely used exponential fam-ily models for social net...
Exponential random graph models are a class of widely used exponential family models for social netw...
Exponential random graph models are an important tool in the statistical analysis of data. However, ...
The statistical modeling of social network data is difficult due to the complex dependence structure...
The statistical modeling of social network data is difficult due to the complex dependence structure...
The statistical modeling of social network data is difficult due to the complex dependence structure...
Deriving Bayesian inference for exponential random graph models (ERGMs) is a challenging “doubly int...
The statistical modeling of social network data is difficult due to the complex dependence structure...
Bayesian inference for exponential random graph models Exponential random graph models are extremely...
This article reviews new specifications for exponential random graph models proposed by Snijders et ...
The most promising class of statistical models for expressing structural properties of social networ...
The most promising class of statistical models for expressing struc-tural properties of social netwo...
The most promising class of statistical models for expressing structural properties of social networ...
Models with intractable likelihood functions arise in areas including network analysisand spatial st...
<p>Models with intractable likelihood functions arise in areas including network analysis and spatia...
Exponential random graph models are a class of widely used exponential fam-ily models for social net...
Exponential random graph models are a class of widely used exponential family models for social netw...
Exponential random graph models are an important tool in the statistical analysis of data. However, ...
The statistical modeling of social network data is difficult due to the complex dependence structure...
The statistical modeling of social network data is difficult due to the complex dependence structure...
The statistical modeling of social network data is difficult due to the complex dependence structure...
Deriving Bayesian inference for exponential random graph models (ERGMs) is a challenging “doubly int...
The statistical modeling of social network data is difficult due to the complex dependence structure...
Bayesian inference for exponential random graph models Exponential random graph models are extremely...
This article reviews new specifications for exponential random graph models proposed by Snijders et ...
The most promising class of statistical models for expressing structural properties of social networ...
The most promising class of statistical models for expressing struc-tural properties of social netwo...
The most promising class of statistical models for expressing structural properties of social networ...