Publication: Can efficiency be gained by correcting for misclassification?
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Date
2013
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Elsevier
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Wang, Molin, Xiaomei Liao, and Donna Spiegelman. 2013. “Can Efficiency Be Gained by Correcting for Misclassification?” Journal of Statistical Planning and Inference 143 (11): 1980–87. https://doi.org/10.1016/j.jspi.2013.06.010.
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Abstract
This paper considers 2 x 2 tables arising from case-control studies in which the binary exposure may be misclassified. We found circumstances under which the inverse matrix method provides a more efficient odds ratio estimator than the naive estimator. We provide some intuition for the findings, and also provide a formula for obtaining the minimum size of a validation study such that the variance of the odds ratio estimator from the inverse matrix method is smaller than that of the naive estimator, thereby ensuring an advantage for the misclassification corrected result. As a corollary of this result, we show that correcting for misclassification does not necessarily lead to a widening of the confidence intervals, but, rather, in addition to producing a consistent estimate, can also produce one that is more efficient.
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