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Formalizing Human-Robot Mutual Adaptation: A Bounded Memory Model

机译:正式的人机交互:有限的记忆模型

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摘要

Mutual adaptation is critical for effective team collaboration. This paper presents a formalism for human-robot mutual adaptation in collaborative tasks. We propose the bounded-memory adaptation model (BAM), which captures human adaptive behaviors based on a bounded memory assumption. We integrate BAM into a partially observable stochastic model, which enables robot adaptation to the human. When the human is adaptive, the robot will guide the human towards a new, optimal collaborative strategy unknown to the human in advance. When the human is not willing to change their strategy, the robot adapts to the human in order to retain human trust. Human subject experiments indicate that the proposed formalism can significantly improve the effectiveness of human-robot teams, while human subject ratings on the robot performance and trust are comparable to those achieved by cross training, a state-of-the-art human-robot team training practice.
机译:相互适应对于有效的团队协作至关重要。本文提出了协作任务中人机交互的形式化形式。我们提出了有界内存适应模型(BAM),该模型基于有界内存假设来捕获人类的适应行为。我们将BAM集成到部分可观察的随机模型中,从而使机器人能够适应人类。当人类具有适应能力时,机器人将引导人类采取预先未知的新的,最佳的协作策略。当人类不愿意改变策略时,机器人会适应人类以保持人类的信任。人体实验表明,所提出的形式主义可以显着提高人类机器人团队的效率,而人类对机器人性能和信任的评级可以与交叉训练相媲美,而交叉训练是一个最先进的人类机器人团队培训实践。

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