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Asymptotic inference for semiparametric association models

4 March 2009
G. Osius
ArXiv (abs)PDFHTML
Abstract

Association models for a pair of random elements XXX and YYY (e.g., vectors) are considered which specify the odds ratio function up to an unknown parameter \boldsθ\bolds\theta\boldsθ. These models are shown to be semiparametric in the sense that they do not restrict the marginal distributions of XXX and YYY. Inference for the odds ratio parameter \boldsθ\bolds\theta\boldsθ may be obtained from sampling either YYY conditionally on XXX or vice versa. Generalizing results from Prentice and Pyke, Weinberg and Wacholder and Scott and Wild, we show that asymptotic inference for \boldsθ\bolds\theta\boldsθ under sampling conditional on YYY is the same as if sampling had been conditional on XXX. Common regression models, for example, generalized linear models with canonical link or multivariate linear, respectively, logistic models, are association models where the regression parameter \boldsβ\bolds\beta\boldsβ is closely related to the odds ratio parameter \boldsθ\bolds\theta\boldsθ. Hence inference for \boldsβ\bolds\beta\boldsβ may be drawn from samples conditional on YYY using an association model.

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