Abstract
The multivariate calibration problem is considered, in which a sample of $n$ observations on vectors $\xi_{(i)}$ (of "true values") and $Y_{(i)}$ (of less accurate but more easily obtained values) are to be used to estimate the unknown $\xi$ corresponding to a future $Y$. It is assumed that $Y = BX + \varepsilon$, where $\varepsilon$ is multivariate normal and $X = h(\xi)$ for known $h$. Current methods for obtaining a confidence region $C$ for $\xi$, which consist of computing a region $R$ for $X$ and then taking $C = h^{-1}(R)$, have the disadvantage that although the region $R$ might be nicely behaved, the region $C$ need not be. An alternative method is proposed which gives a well-behaved region (corresponding to the uniformly most accurate translation-invariant region when $h$ is linear, $B$ is known and the covariance matrix of $\varepsilon$ is a known multiple of the identity). An application is given to the estimation of gestational age using ultrasound fetal bone measurements.
Citation
Samuel D. Oman. "Confidence Regions in Multivariate Calibration." Ann. Statist. 16 (1) 174 - 187, March, 1988. https://doi.org/10.1214/aos/1176350698
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