Can machine learning be used to forecast the future uncertainty of military teams?

IF 1 Q3 ENGINEERING, MULTIDISCIPLINARY
Ronald H. Stevens, Trysha Galloway
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引用次数: 4

Abstract

Uncertainty is a fundamental property of neural computation that becomes amplified when sensory information does not match a person’s expectations of the world. Uncertainty and hesitation are often early indicators of potential disruption, and the ability to rapidly measure uncertainty would have implications for future educational and training efforts by targeting reflective discussions about past actions, supporting in-progress corrections, and generating forecasts about future disruptions. An approach is described combining neurodynamics and machine learning to provide quantitative measures of uncertainty. Models of neurodynamic information derived from electroencephalogram (EEG) brainwaves have provided detailed neurodynamic histories of US Navy submarine navigation team members. Persistent periods (25–30 s) of neurodynamic information were seen as discrete peaks when establishing the submarine’s position and were identified as periods of uncertainty by an artificial intelligence (AI) system previously trained to recognize the frequency, magnitude, and duration of different patterns of uncertainty in healthcare and student teams. Transition matrices of neural network states closely predicted the future uncertainty of the navigation team during the three minutes prior to a grounding event. These studies suggest that the dynamics of uncertainty may have common characteristics across teams and tasks and that forecasts of their short-term evolution can be estimated.
机器学习可以用来预测军队未来的不确定性吗?
不确定性是神经计算的一个基本属性,当感觉信息与一个人对世界的期望不匹配时,它会被放大。不确定性和犹豫通常是潜在中断的早期指标,快速测量不确定性的能力将对未来的教育和培训工作产生影响,通过针对过去行动的反思性讨论,支持正在进行的纠正,并生成对未来中断的预测。描述了一种结合神经动力学和机器学习的方法来提供不确定性的定量测量。从脑电图(EEG)脑电波中获得的神经动力学信息模型提供了美国海军潜艇导航小组成员的详细神经动力学历史。在确定潜艇位置时,神经动力学信息的持续周期(25-30秒)被视为离散的峰值,并被人工智能(AI)系统识别为不确定周期,该系统先前经过训练,可以识别医疗保健和学生团队中不同不确定模式的频率、大小和持续时间。神经网络状态的转换矩阵紧密地预测了在接地事件发生前三分钟内导航团队的未来不确定性。这些研究表明,不确定性的动态可能具有跨团队和任务的共同特征,并且可以估计其短期演变的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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