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Preliminary Analysis of Human Error Prediction Model by Using Biological Information

机译:利用生物信息初步分析人类误差预测模型

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Increasing in aging population forced the society to act more than their limit. For instance, an action such as driving, where we need our mental concentration at most, could lead to serious accident from a simple mistake because of overwork. Therefore, it is crucial to prevent the accident. Many researchers focus on biological information to predict the error because human error always related to a person's cognitive condition such as stress and discomfort. However, existing studies on the human error prediction model have not conducted a detailed analysis, and also have not considered individual differences. Therefore, the purpose of this study is to analyze the biological information immediately before and after the occurrence of human error in order to construct a prediction model for human error considering individual differences. In this study, we developed the Stroop task to be used as the mental workload and measured the subjects' biological information. As a result, we proposed 10 [s] as the time intervals for before and after the consecutive of the occurrence of the human errors for better analysis. Besides, the biological information measured from all subjects suggested that pNN10 can be considered as the predictive indicator for human error occurrence. However, other biological information also expressed vary results where our next step needs to consider the individual differences by increasing the sample size. In addition, the logistic regression will be considered for machine learning to be used for the human error prediction model construction.
机译:老龄化人口越来越迫使社会行动超过他们的极限。例如,驾驶等行动,我们最多需要我们的精神浓度,可能因过度劳累而导致简单错误的严重事故。因此,预防事故是至关重要的。许多研究人员专注于生物信息,以预测错误,因为人为错误总是与一个人的认知条件(如压力和不适)有关。然而,对人为误差预测模型的现有研究没有进行详细的分析,并且还没有考虑单个差异。因此,本研究的目的是在人为误差发生之前和之后立即分析生物信息,以便考虑个人差异的人为错误的预测模型。在这项研究中,我们开发了用作心理工作量的Stloop任务,并测量了受试者的生物信息。结果,我们提出了10 [S]作为前后的时间间隔,以便在人为错误的发生以获得更好的分析。此外,从所有受试者测量的生物学信息表明PNN10可以被认为是人类错误发生的预测指标。然而,其他生物信息也表达了通过增加样本大小来考虑各个差异的不同结果。此外,将考虑对人类误差预测模型建设使用的机器学习的逻辑回归。

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