%0 Journal Article %T Asymptotic inference for semiparametric association models %A Gerhard Osius %J Mathematics %D 2009 %I arXiv %R 10.1214/07-AOS572 %X Association models for a pair of random elements $X$ and $Y$ (e.g., vectors) are considered which specify the odds ratio function up to an unknown parameter $\bolds\theta$. These models are shown to be semiparametric in the sense that they do not restrict the marginal distributions of $X$ and $Y$. Inference for the odds ratio parameter $\bolds\theta$ may be obtained from sampling either $Y$ conditionally on $X$ or vice versa. Generalizing results from Prentice and Pyke, Weinberg and Wacholder and Scott and Wild, we show that asymptotic inference for $\bolds\theta$ under sampling conditional on $Y$ is the same as if sampling had been conditional on $X$. Common regression models, for example, generalized linear models with canonical link or multivariate linear, respectively, logistic models, are association models where the regression parameter $\bolds\beta$ is closely related to the odds ratio parameter $\bolds\theta$. Hence inference for $\bolds\beta$ may be drawn from samples conditional on $Y$ using an association model. %U http://arxiv.org/abs/0903.0702v1