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Human-robot cross-training: Computational formulation, modeling and evaluation of a human team training strategy

机译:人机交互训练:人队训练策略的计算公式,建模和评估

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We design and evaluate human-robot cross-training, a strategy widely used and validated for effective human team training. Cross-training is an interactive planning method in which a human and a robot iteratively switch roles to learn a shared plan for a collaborative task. We first present a computational formulation of the robot's interrole knowledge and show that it is quantitatively comparable to the human mental model. Based on this encoding, we formulate human-robot cross-training and evaluate it in human subject experiments (n = 36). We compare human-robot cross-training to standard reinforcement learning techniques, and show that cross-training provides statistically significant improvements in quantitative team performance measures. Additionally, significant differences emerge in the perceived robot performance and human trust. These results support the hypothesis that effective and fluent human-robot teaming may be best achieved by modeling effective practices for human teamwork.
机译:我们设计并评估了人机交互培训,该策略被广泛用于有效的团队培训并已得到验证。交叉训练是一种交互式计划方法,其中,人和机器人迭代地切换角色,以学习协作任务的共享计划。我们首先介绍了机器人的知识知识的计算公式,并表明它在数量上可与人类的心理模型相提并论。基于这种编码,我们制定了人机交互训练,并在人的实验中对其进行了评估(n = 36)。我们将人机交互训练与标准强化学习技术进行了比较,并显示了交叉训练在量化团队绩效指标方面提供了统计学上显着的改进。此外,在感知的机器人性能和人类信任度方面也出现了显着差异。这些结果支持以下假设:通过对人类团队合作的有效实践进行建模,可以最好地实现有效且流畅的人类机器人团队。

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