Shrinkage confidence intervals for the normal mean: Using a guess for greater efficiency |
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Authors: | Robin Willink |
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Affiliation: | Industrial Research Limited P.O. Box 31‐310 Lower Hutt 5040, New Zealand |
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Abstract: | If the unknown mean of a univariate population is sufficiently close to the value of an initial guess then an appropriate shrinkage estimator has smaller average squared error than the sample mean. This principle has been known for some time, but it does not appear to have found extension to problems of interval estimation. The author presents valid two‐sided 95% and 99% “shrinkage” confidence intervals for the mean of a normal distribution. These intervals are narrower than the usual interval based on the Student distribution when the population mean lies in such an “effective interval.” A reduction of 20% in the mean width of the interval is possible when the population mean is sufficiently close to the value of the guess. The author also describes a modification to existing shrinkage point estimators of the general univariate mean that enables the effective interval to be enlarged. |
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Keywords: | Confidence coefficient efficiency information interval estimation point estimation shrinkage estimator |
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