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Main Authors: Battey, Heather, Reid, Nancy
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.05708
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author Battey, Heather
Reid, Nancy
author_facet Battey, Heather
Reid, Nancy
contents The paper is concerned with inference for a parameter of interest in models that share a common interpretation for that parameter but that may differ appreciably in other respects. We study the general structure of models under which the maximum likelihood estimator of the parameter of interest is consistent under arbitrary misspecification of the nuisance part of the model. A specialization of the general results to matched-comparison and two-groups problems gives a more explicit and easily checkable condition in terms of a new notion of symmetric parametrization, leading to a broadening and unification of existing results in those problems. The role of a generalized definition of parameter orthogonality is highlighted, as well as connections to Neyman orthogonality. The issues involved in obtaining inferential guarantees beyond consistency are briefly discussed.
format Preprint
id arxiv_https___arxiv_org_abs_2402_05708
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle On the role of parametrization in models with a misspecified nuisance component
Battey, Heather
Reid, Nancy
Statistics Theory
The paper is concerned with inference for a parameter of interest in models that share a common interpretation for that parameter but that may differ appreciably in other respects. We study the general structure of models under which the maximum likelihood estimator of the parameter of interest is consistent under arbitrary misspecification of the nuisance part of the model. A specialization of the general results to matched-comparison and two-groups problems gives a more explicit and easily checkable condition in terms of a new notion of symmetric parametrization, leading to a broadening and unification of existing results in those problems. The role of a generalized definition of parameter orthogonality is highlighted, as well as connections to Neyman orthogonality. The issues involved in obtaining inferential guarantees beyond consistency are briefly discussed.
title On the role of parametrization in models with a misspecified nuisance component
topic Statistics Theory
url https://arxiv.org/abs/2402.05708