教学机器识别团队和团队成员不确定性的神经动力学相关性

IF 2.2 Q3 ENGINEERING, INDUSTRIAL
Ronald H. Stevens, Trysha Galloway
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引用次数: 17

摘要

我们描述了通过关注不确定性使人类对机器更加透明的努力,不确定性是一个植根于神经元群体的概念,通过社会互动来扩展。为了成为有效的团队合作伙伴,机器需要了解不确定性为什么会发生,它是如何发生的,它将持续多久,以及机器可以提供的可能缓解措施。脑电图衍生的团队神经动力组织测量被用于识别军事、医疗保健和高中解决问题团队的不确定性时间。组装了一组在不确定性的大小和持续时间上不同的神经动力学序列,目的是训练机器来检测长时间的高水平不确定性的开始,即团队何时可能需要支持。通过使用自组织映射(SOM)对前70个样本进行分类来识别不确定性开始的变化,SOM是一种机器架构,在训练期间开发拓扑结构,将密切相关的数据与绝望的数据分离开来。训练期间形成的集群区分了无不确定性、低水平和快速解决的不确定性以及长期的高水平不确定性的模式,为基于神经动力学的系统创造了机会,这些系统可以解释团队不确定性的起伏,并在需要时近乎实时地向培训师或团队提供建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Teaching Machines to Recognize Neurodynamic Correlates of Team and Team Member Uncertainty
We describe efforts to make humans more transparent to machines by focusing on uncertainty, a concept with roots in neuronal populations that scales through social interactions. To be effective team partners, machines will need to learn why uncertainty happens, how it happens, how long it will last, and possible mitigations the machine can supply. Electroencephalography-derived measures of team neurodynamic organization were used to identify times of uncertainty in military, health care, and high school problem-solving teams. A set of neurodynamic sequences was assembled that differed in the magnitudes and durations of uncertainty with the goal of training machines to detect the onset of prolonged periods of high level uncertainty, that is, when a team might require support. Variations in uncertainty onset were identified by classifying the first 70 s of the exemplars using self-organizing maps (SOM), a machine architecture that develops a topology during training that separates closely related from desperate data. Clusters developed during training that distinguished patterns of no uncertainty, low-level and quickly resolved uncertainty, and prolonged high-level uncertainty, creating opportunities for neurodynamic-based systems that can interpret the ebbs and flows in team uncertainty and provide recommendations to the trainer or team in near real time when needed.
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来源期刊
CiteScore
4.60
自引率
10.00%
发文量
21
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