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arxiv: 1510.02430 · v4 · pith:A5WYAGDOnew · submitted 2015-10-08 · 📊 stat.ME · stat.AP

On Modeling and Estimation for the Relative Risk and Risk Difference

classification 📊 stat.ME stat.AP
keywords riskestimationmodelnuisancedifferenceparametersproblemrelative
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A common problem in formulating models for the relative risk and risk difference is the variation dependence between these parameters and the baseline risk, which is a nuisance model. We address this problem by proposing the conditional log odds-product as a preferred nuisance model. This novel nuisance model facilitates maximum-likelihood estimation, but also permits doubly-robust estimation for the parameters of interest. Our approach is illustrated via simulations and a data analysis.

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