The effect of automation and workspace design on humans' ability to recognize patterns while fusing information

Kellie L. Turner, Michael E. Miller
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引用次数: 3

Abstract

Increasingly complex contested environments force analysts to combine many different types of intelligence data to form a more cohesive picture of the environment. Information fusion systems include computers that integrate and synthesize information from multiple sources and humans who combine that information with reasoning abilities and knowledge of past events to assess situations and predict future states. The intent of this paper is to highlight the importance of understanding human cognition and decision making by presenting the hypotheses of our current research. The purpose of the future study described in this paper is to investigate how the degree of information acquisition automation used affects the human's ability to detect patterns in data that may be needed to reach higher levels of information fusion. This study will use a 2 (task type: intuitive, analytic) × 3 (amount of automation: none, half, all), between subjects experimental design. We expect to find a significant interaction between task type and amount of automation. For tasks that induce the human's intuitive system, increasing automation is expected to disrupt the human's ability to recognize patterns. However, for tasks that induce the human's analytic system, increasing automation is expected to improve the human's ability to discern patterns. The results of this research can inform guidelines for the design of common workspaces to support human-machine teaming in future information fusion systems.
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自动化和工作空间设计对人类在融合信息时识别模式的能力的影响
日益复杂的竞争环境迫使分析人员将许多不同类型的情报数据结合起来,形成一个更有凝聚力的环境图景。信息融合系统包括整合和综合来自多个来源的信息的计算机,以及将这些信息与推理能力和过去事件的知识结合起来评估情况和预测未来状态的人类。本文的目的是通过提出我们目前研究的假设来强调理解人类认知和决策的重要性。本文描述的未来研究的目的是调查所使用的信息获取自动化程度如何影响人类检测数据模式的能力,这些模式可能需要达到更高水平的信息融合。本研究将采用2(任务类型:直观、分析)× 3(自动化程度:无、一半、全部)的受试者间实验设计。我们期望在任务类型和自动化程度之间找到重要的交互作用。对于那些激发人类直觉系统的任务,越来越多的自动化预计会破坏人类识别模式的能力。然而,对于需要人类分析系统的任务,自动化程度的提高有望提高人类识别模式的能力。这项研究的结果可以为公共工作空间的设计提供指导,以支持未来信息融合系统中的人机协作。
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