Using latent variables to account for heterogeneity in exponential family random graph models
We consider relaxing the homogeneity assumption in exponential family random graph models (ERGMs) using binary latent class indicators. This may be interpreted as combining a posteriori blockmodelling with ERGMs, relaxing the independence assumptions of the former and the homogeneity assumptions of...
Main Author: | Koskinen, J |
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Format: | Book |
Published: |
2010
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