A nonparametric calibration analysis
Open Access
- 1 August 1996
- journal article
- Published by Institute of Mathematical Statistics in The Annals of Statistics
- Vol. 24 (4) , 1474-1492
- https://doi.org/10.1214/aos/1032298278
Abstract
In this paper we discuss a new approach to solve calibration problems in a nonparametric setting. This approach is appealing because it yields estimates of the required quantities directly. The method combines kernel and robust estimation techniques. It relies on strong approximations of the estimating process and the extreme value theorem of Bickel and Rosenblatt. Using these results, we first obtain robust pointwise estimates of the parameters of interest. Second, we set up asymptotic simultaneous tolerance regions for many unknown values of the quantity to be calibrated. The technique is illustrated on a radiocarbon dating problem. The nonparametric calibration procedure proves to be of practical, as well as theoretical interest; moreover, it is quick and simple to implement.Keywords
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