A note on the role of projectivity in likelihood-based inference for random graph models
classification
🧮 math.ST
stat.TH
keywords
projectivityinferencelikelihood-basedconfusionconsistencyestimatorsgraphlikelihood
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There is widespread confusion about the role of projectivity in likelihood-based inference for random graph models. The confusion is rooted in claims that projectivity, a form of marginalizability, may be necessary for likelihood-based inference and consistency of maximum likelihood estimators. We show that likelihood-based superpopulation inference is not affected by lack of projectivity and that projectivity is not a necessary condition for consistency of maximum likelihood estimators.
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