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Mining human failure dynamics from accident data using logistic regression and decision trees

机译:使用Logistic回归和决策树从事故数据中挖掘人类失效动态

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摘要

The effective operation of technology depends on the decision-making of the humans operating that technology. Of fundamental Interest are the conditions that may lead to failure or accidents. Research to understand human decision-making processes that lead to failure under varying conditions has typically approached the problem either deductively or inductively through surveys or small-scale experiments This paper describes an Inductive approach based on mining multiple accident data sets for relationships between environmental factors, human factors, operational stimuli, and the probability of correct response by the human operators. We describe data mining techniques we have developed for this problem and then show their applicability to train accident data.
机译:技术的有效运作取决于人类经营该技术的决策。基本兴趣是可能导致失败或事故的条件。研究以了解在不同条件下导致失败的人类决策过程通常通过调查或小型实验来实现这一问题,或者通过调查或小规模实验来介绍基于挖掘多次事故数据集的感应方法,以实现环境因素之间的关系,人类因素,运营刺激,以及人类运营商正确响应的概率。我们描述了我们为此问题开发的数据挖掘技术,然后显示他们对培训事故数据的适用性。

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