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arxiv: 1010.0306 · v1 · pith:HVOC34UBnew · submitted 2010-10-02 · 📊 stat.ME

Interval Estimation for Messy Observational Data

classification 📊 stat.ME
keywords estimationintervalbayesiandatamessyseriesacknowledgesanalysis
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We review some aspects of Bayesian and frequentist interval estimation, focusing first on their relative strengths and weaknesses when used in "clean" or "textbook" contexts. We then turn attention to observational-data situations which are "messy," where modeling that acknowledges the limitations of study design and data collection leads to nonidentifiability. We argue, via a series of examples, that Bayesian interval estimation is an attractive way to proceed in this context even for frequentists, because it can be supplied with a diagnostic in the form of a calibration-sensitivity simulation analysis. We illustrate the basis for this approach in a series of theoretical considerations, simulations and an application to a study of silica exposure and lung cancer.

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