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Incorporating prior knowledge with simulation data to estimate PSF multipliers using Bayesian logistic regression

机译:使用贝叶斯逻辑回归将先验知识与模拟数据相结合以估计PSF乘数

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摘要

Recently, several kinds of databases have been constructed and analyzed to support human reliability analyses. Based on these, some researchers have attempted to model the quantitative relations between performance shaping factors and human error probability. However, the limitations of the traditional regression technique and simulation data employed have come to light. To tackle these issues regarding the traditional statistical analysis, this study proposes an analysis based on the Bayesian logistic regression method that incorporates empirical data with prior knowledge. This method was applied to four different prior knowledge sets and empirical data collected via the Human Reliability data Extraction (HuREX) framework. The mean and credible interval from the obtained posterior distributions were compared with previous research. From the application, we found that the suggested approach is useful in consolidating various data sources to estimate the multipliers of performance shaping factors on error probabilities, producing results robust to the data characteristics, and providing the quantitative uncertainties of the estimation. It is also confirmed that selecting an appropriate prior knowledge and collecting abundant and correct empirical data are important for producing meaningful insights for PSF impacts.
机译:最近,已经建立和分析了几种数据库来支持人类可靠性分析。基于这些,一些研究人员试图对绩效塑造因素与人为错误概率之间的定量关系进行建模。但是,传统回归技术和采用的模拟数据的局限性已经暴露出来。为了解决与传统统计分析有关的这些问题,本研究提出了一种基于贝叶斯逻辑回归方法的分析方法,该方法将经验数据与先验知识相结合。该方法适用于四个不同的现有知识集和通过人类可靠性数据提取(HuREX)框架收集的经验数据。将获得的后验分布的平均值和可信区间与以前的研究进行了比较。从应用程序中,我们发现建议的方法可用于合并各种数据源,以估计错误概率上的性能整形因子的乘数,产生对数据特征有鲁棒性的结果,并提供估计的定量不确定性。还证实选择适当的先验知识并收集大量正确的经验数据对于产生对PSF影响的有意义的见解很重要。

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