科技报告详细信息
Acceptance sampling using judgmental and randomly selected samples
Sego, Landon H. ; Shulman, Stanley A. ; Anderson, Kevin K. ; Wilson, John E. ; Pulsipher, Brent A. ; Sieber, W. Karl
关键词: PROBABILITY;    SAFETY;    SAMPLING;    MATHEMATICAL MODELS;    ENVIRONMENTAL MATERIALS acceptance sampling;    judgmental sampling;    environmental sampling;    Bayesian modeling;   
DOI  :  10.2172/991092
RP-ID  :  PNNL-19315
PID  :  OSTI ID: 991092
Others  :  Other: 400904120
Others  :  TRN: US201021%%11
美国|英语
来源: SciTech Connect
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【 摘 要 】

We present a Bayesian model for acceptance sampling where the population consists of two groups, each with different levels of risk of containing unacceptable items. Expert opinion, or judgment, may be required to distinguish between the high and low-risk groups. Hence, high-risk items are likely to be identifed (and sampled) using expert judgment, while the remaining low-risk items are sampled randomly. We focus on the situation where all observed samples must be acceptable. Consequently, the objective of the statistical inference is to quantify the probability that a large percentage of the unsampled items in the population are also acceptable. We demonstrate that traditional (frequentist) acceptance sampling and simpler Bayesian formulations of the problem are essentially special cases of the proposed model. We explore the properties of the model in detail, and discuss the conditions necessary to ensure that required samples sizes are non-decreasing function of the population size. The method is applicable to a variety of acceptance sampling problems, and, in particular, to environmental sampling where the objective is to demonstrate the safety of reoccupying a remediated facility that has been contaminated with a lethal agent.

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