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12 - Simulation, Estimation, and Goodness of Fit

Published online by Cambridge University Press:  05 April 2013

Dean Lusher
Affiliation:
Swinburne University of Technology, Victoria
Johan Koskinen
Affiliation:
University of Manchester
Garry Robins
Affiliation:
University of Melbourne
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Summary

Exploring and Relating Model to Data in Practice

Previous chapters concentrated on the formulation and specification of exponential random graph models (ERGMs) for different types of relational data. In Chapter 6, we saw that effects represented by configurations and corresponding parameters define a distribution of graphs where the probability of getting any particular graph depends on the configurations in the graph. Chapter 7 showed that configurations are sufficient information in the sense that the probability of a graph is completely determined by statistics that are the counts of relevant configurations.

If we increase the strength of a parameter for a given configuration, graphs with more of that configuration become more likely in the resulting distribution. This simple fact is used in the three methods presented in this chapter:

  1. Simulation: For a given model by fixing parameter values, it is possible to examine the features of graphs in the distribution through simulation to gain insight into the outcomes of the model.

  2. Estimation: Empirically, for a given model and a given dataset, it is possible to estimate the parameter values that are most likely to have generated the observed graph, the “maximum likelihood estimates (MLEs).” Furthermore, it can be shown that the observed graph is central in the distribution of graphs determined by these estimates–but as we will see, because of the dependencies in the data, MLE requires simulation procedures.

  3. Heuristic goodness of fit (GOF): For a fitted model (i.e., with parameters estimated from data), it is then possible to simulate the distribution of graphs to see whether other features of the data (i.e., nonfitted effects) are central or extreme in the distribution. If a graph feature is not extreme, there is no evidence to suggest that it may not have arisen from processes implicit in this model, and hence we can say that the model can explain that particular feature of the data – in other words, that such a feature is well fitted by the model.

Type
Chapter
Information
Exponential Random Graph Models for Social Networks
Theory, Methods, and Applications
, pp. 141 - 166
Publisher: Cambridge University Press
Print publication year: 2012

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