標題: Approximate Tolerance Limits Under Log-Location-Scale Regression Models in the Presence of Censoring
作者: Emura, Takeshi
Wang, Hsiuying
統計學研究所
Institute of Statistics
關鍵字: Jackknife;Life tests;Maximum likelihood;Regression analysis
公開日期: 1-八月-2010
摘要: For a product manufactured in large quantities, tolerance limits play a fundamental role in setting limits on the process capability. Existing methodologies for setting tolerance limits in life test experiments focus primarily on one-sample problems. In this study, we extend tolerance limits in the presence of covariates in life test experiments. A method constructing approximate tolerance limits is proposed under log-location-scale regression models, a class of models used widely in reliability and life test experiments. The method is based on an application of the large sample theory of maximum likelihood estimators, which is modified by a bias-adjustment technique to enhance small sample accuracy. The proposed approximate tolerance limits are shown asymptotically to have nominal coverage probability under the assumption of "independent censoring." This includes Type I and Type II censoring schemes. Simulation studies are conducted to assess finite sample properties under the log-location-scale regression models. The method is illustrated with two datasets. R codes for implementing the proposed method are available online on the Technometrics web site, as supplemental materials.
URI: http://dx.doi.org/10.1198/TECH.2010.09025
http://hdl.handle.net/11536/32343
ISSN: 0040-1706
DOI: 10.1198/TECH.2010.09025
期刊: TECHNOMETRICS
Volume: 52
Issue: 3
起始頁: 313
結束頁: 323
顯示於類別:期刊論文