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On Decision Making In Human-Machine Networks

机译:论人机网络的决策

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摘要

Human behavior while decision making is quite complex and uncertain. There are fundamental differences between traditional decision making systems based on sensor data and systems where the agents in the decision making process include humans. The modeling and analysis of human-machine collaborative decision making has become an important research area due to the potential applications in a variety of complex autonomous systems. Incorporating human inputs with physical sensors can be advantageous in enhancing situational assessment for certain situations, and at the same time, brings in technical challenges such as how to characterize the human decision making behavior. In this paper, we discuss some aspects of human-machine networks by focusing on three schemes that include collaborative human decision making with random local thresholds, decision fusion in integrated human-machine networks and binary decision making under cognitive biases. In each case, we aim to optimize the system performance based on appropriate modeling of the human behavior. We also provide a summary of current challenges and research directions related to this problem domain.
机译:人类的行为,而决策是非常复杂和不确定的。基于传感器数据和系统的传统决策系统之间存在根本的差异,其中决策过程中的代理包括人类。由于各种复杂的自主系统中的潜在应用,人机协作决策的建模与分析已成为一个重要的研究领域。将人类输入与物理传感器纳入有利的是,在提高某些情况的情况下,同时可以带来技术挑战,例如如何表征人类决策行为。在本文中,我们通过专注于包括随机本地阈值的协作人体决策,集成的人机网络中的决策融合以及认知偏差下的二进制决策制作的三个方案讨论了人机网络的一些方面。在每种情况下,我们的目标是基于适当的人类行为建模优化系统性能。我们还提供了与此问题域相关的当前挑战和研究方向的摘要。

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