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A New Perspective for the Training Assessment: Machine Learning-Based Neurometric for Augmented Users Evaluation

机译:培训评估的新视角:基于机器学习的神经测量技术用于增强用户评估

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摘要

Inappropriate training assessment might have either high social costs and economic impacts, especially in high risks categories, such as Pilots, Air Traffic Controllers, or Surgeons. One of the current limitations of the standard training assessment procedures is the lack of information about the amount of cognitive resources requested by the user for the correct execution of the proposed task. In fact, even if the task is accomplished achieving the maximum performance, by the standard training assessment methods, it would not be possible to gather and evaluate information about cognitive resources available for dealing with unexpected events or emergency conditions. Therefore, a metric based on the brain activity (neurometric) able to provide the Instructor such a kind of information should be very important. As a first step in this direction, the Electroencephalogram (EEG) and the performance of 10 participants were collected along a training period of 3 weeks, while learning the execution of a new task. Specific indexes have been estimated from the behavioral and EEG signal to objectively assess the users' training progress. Furthermore, we proposed a neurometric based on a machine learning algorithm to quantify the user's training level within each session by considering the level of task execution, and both the behavioral and cognitive stabilities between consecutive sessions. The results demonstrated that the proposed methodology and neurometric could quantify and track the users' progresses, and provide the Instructor information for a more objective evaluation and better tailoring of training programs.
机译:不合适的培训评估可能会带来很高的社会成本和经济影响,尤其是在飞行员,空中交通管制员或外科医生等高风险类别中。标准培训评估程序的当前局限性之一是缺少有关用户为正确执行建议任务而请求的认知资源数量的信息。实际上,即使通过标准的培训评估方法完成任务以达到最佳性能,也无法收集和评估有关可用于处理意外事件或紧急情况的认知资源的信息。因此,基于大脑活动的度量(神经度量)能够为教师提供这种信息非常重要。作为朝着这个方向迈出的第一步,在学习新任务执行的同时,经过3周的训练,收集了10名参与者的脑电图(EEG)和表现。已经从行为和脑电信号中估计出特定的指标,以客观地评估用户的培训进度。此外,我们提出了一种基于机器学习算法的神经测量技术,通过考虑任务执行级别以及连续会话之间的行为和认知稳定性,来量化每次会话中用户的训练水平。结果表明,所提出的方法和神经计量学可以量化和跟踪用户的进度,并为指导者信息提供更客观的评估和更好地定制培训计划。

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