题名 |
Improved Tolerance Limits by Combining Analytical and Experimental Data: An Information Integration Methodology |
DOI |
10.6339/JDS.2006.04(3).271 |
作者 |
A. Alexandre Trindade;Stan Uryasev |
关键词 |
A basis ; B basis ; quantile regression ; reliability |
期刊名称 |
Journal of Data Science |
卷期/出版年月 |
4卷3期(2006 / 07 / 01) |
页次 |
371 - 386 |
内容语文 |
英文 |
英文摘要 |
We propose a coherent methodology for integrating different sources of information on a response variable of interest, in order to accurately predict percentiles of its distribution. Under the assumption that one of the sources is more reliable than the other(s), the approach combines factors formed from the data into an additive linear regression model. Quantile regression, designed for quantifying the goodness of fit precisely at a desired quantile, is used as the optimality criterion in model-fitting. Asymptotic confidence interval construction methods for the percentiles are adopted to compute statistical tolerance limits for the response. The approach is demonstrated on a materials science case study that pools together information on failure load from physical tests and computer model predictions. A small simulation study assesses the precision of the inferences. The methodology gives plausible percentile estimates. Resulting tolerance limits are close to nominal coverage probability levels. |
主题分类 |
基礎與應用科學 >
資訊科學 基礎與應用科學 > 統計 |