Approximating faces of marginal polytopes in discrete hierarchical
models
- TPM
The existence of the maximum likelihood estimate in hierarchical loglinear models is crucial to the reliability of inference for this model. Determining whether the estimate exists is equivalent to finding whether the sufficient statistics vector belongs to the boundary of the marginal polytope of the model. The dimension of the smallest face containing determines the dimension of the reduced model which should be considered for correct inference. For higher-dimensional problems, it is not possible to compute exactly. Massam and Wang (2015) found an outer approximation to using a collection of sub-models of the original model. This paper refines the methodology to find an outer approximation and devises a new methodology to find an inner approximation. The inner approximation is given not in terms of a face of the marginal polytope, but in terms of a subset of the vertices of . Knowing exactly indicates which cell probabilities have maximum likelihood estimates equal to . When cannot be obtained exactly, we can use, first, the outer approximation to reduce the dimension of the problem and, then, the inner approximation to obtain correct estimates of cell probabilities corresponding to elements of and improve the estimates of the remaining probabilities corresponding to elements in . Using both real-world and simulated data, we illustrate our results, and show that our methodology scales to high dimensions.
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