插值非参数预测区间和置信区间

R. Beran, P. Hall
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引用次数: 41

摘要

在一些重要的统计问题中,预测区间和置信区间可以用精确已知的覆盖水平来构建,但不能使其等于预定的水平,如0.95。解决这个困难的一个办法是在这些间隔之间进行插值。我们发现简单的线性插值降低了覆盖误差的阶数,但更高阶的插值没有进一步的改善。对于预测区间,误差减少一个因子n -1,对于置信区间,误差减少一个因子n -1/2,其中n表示样本量。在分位数置信区间的情况下,线性插值提供了特别准确的区间,这在保守性方面犯了错误
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpolated Nonparametric Prediction Intervals and Confidence Intervals
In several important statistical problems, prediction intervals and confidence intervals can be constructed with coverage levels which are known precisely but cannot be rendered equal to predetermined levels such as 0.95. One solution to this difficulty is to interpolate between such intervals. We show that simple linear interpolation reduces the order of coverage error, but that higher orders of interpolation produce no further improvement. The error is reduced by a factor n -1 for prediction intervals and n -1/2 for confidence intervals, where n denotes sample size. In the case of confidence intervals for quantiles, linear interpolation provides particularly accurate intervals which err on the side of conservatism
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