1972
DOI: 10.1080/00401706.1972.10488944
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On the Problem of Calibration

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Cited by 75 publications
(32 citation statements)
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“…5. This huge credible interval is in agreement with the frequentist mean square error of 4.9 obtained with the expansion of Shukla (1972). 3, but now with the NAO as the independent variable.…”
Section: A the Nao-nam Examplesupporting
confidence: 88%
“…5. This huge credible interval is in agreement with the frequentist mean square error of 4.9 obtained with the expansion of Shukla (1972). 3, but now with the NAO as the independent variable.…”
Section: A the Nao-nam Examplesupporting
confidence: 88%
“…The variance of the classical estimator is infinite, but Shukla (1972) obtained expressions for the expectation and the mean squared error of (3.1), conditional on the event that I /BI > 0, to terms of O(n-~) assuming that F is normal. Shukla's approach can be extended to the case in which F is a more general distribution with the following specifications: (3.5)…”
Section: The Case When a /F And A2 Are Unknownmentioning
confidence: 99%
“…For normal F, Shukla (1972) obtained expressions for the expectation and the mean squared error of (3.5) to terms of O(n-1). Again, Shukla's result for the inverse estimator can be extended to a more general distribution of Y as given in ( B2=43n -l 3A -3Sxl, C2 0 -2-2 + n-1 + A20 -2(2 -2 + 6)…”
Section: The Case When a /F And A2 Are Unknownmentioning
confidence: 99%
“…In practice, of course, we must use defined analogously to , and trueξ̂c as defined in ; and then, as with the classical estimator in the context of simple linear regression, division by trueβ̂1 results in infinite MSE for both estimators. However, in typical applications, there is a minimal probability of trueβ̂1 being close to zero (note the confidence interval in Table ), so as with the classical estimator , one can consider asymptotic MSE, conditional on MathClass-rel∣trueβ̂1MathClass-rel∣MathClass-rel>0. It is difficult to obtain a usable analytic approximation to the asymptotic MSE(trueξ̂cMathClass-punc,ξ); moreover, such an approximation, using the delta method, would require assuming not only that the estimates trueβ̂MathClass-punc,trueσ̂2 and truebold-italicΦ̂ are close to the true parameter values in – but also that ε 0 is close to zero in .…”
Section: Numerical Performancementioning
confidence: 99%