Representing Degree Distributions, Clustering, and Homophily in Social Networks With Latent Cluster Random Effects Models.
Social network data often involve transitivity, homophily on observed attributes, clustering, and heterogeneity of actor degrees. We propose a latent cluster random effects model to represent all of these features, and we describe a Bayesian estimation method for it. The model is applicable to both binary and non-binary network data. We illustrate the model using two real datasets. We also apply it to two simulated network datasets with the same, highly skewed, degree distribution, but very different network behavior: one unstructured and the other with transitivity and clustering. Models based on degree distributions, such as scale-free, preferential attachment and power-law models, cannot distinguish between these very different situations, but our model does.
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Related Subject Headings
- Sociology
- 4410 Sociology
- 4401 Anthropology
- 1608 Sociology
- 1601 Anthropology
Citation
Published In
DOI
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Sociology
- 4410 Sociology
- 4401 Anthropology
- 1608 Sociology
- 1601 Anthropology