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Towards trustworthiness and transparency in social human-robot interaction

机译:在社交人机互动中实现可信度和透明度

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Cooperation between autonomous robots and humans is becoming more and more demanding. Robots have to be able to capable of possessing and expose a wide range of cognitive functions, once humans require their help. This paper describes a cognitive architecture for human-robot interaction that allows a robot to dynamically modulate its own level of social autonomy every time a human user delegates to it a task to accomplish in her/his place. The task adoption process leverages on multiple robot’s cognitive capabilities (i.e. the ability to have a theory of mind of the user, to build a model of the world, to profile the user and to make an evaluation about its own skill trustworthiness for building the user’s profile). On the basis of these capabilities the robot is able to adapt its own level of intelligent collaboration by adopting the task at the different levels of help defined in the theory of delegation and adoption conceived by Castelfranchi and Falcone. Besides that, the architecture enhances robot’s behavior transparency because gives to it the ability to provide a comprehensive explanation of the strategy it has adopted for accomplishing the delegated task. We propose an implementation of the cognitive architecture based on JaCaMo framework, which provides support for implementing multi-agent systems and integrates different multi-agent programming dimensions.
机译:自主机器人与人类之间的合作变得越来越苛刻。一旦人类需要帮助,机器人就必须能够拥有并展示广泛的认知功能。本文介绍了一种用于人机交互的认知体系结构,该体系结构使每当人类用户将任务委派给机器人时,机器人就可以动态地调整其自身的社会自治水平。任务采用过程利用了多种机器人的认知能力(即具有用户心智理论,建立世界模型,描述用户并评估其自身技能可信度的能力,以建立用户的能力)。轮廓)。基于这些功能,机器人可以通过在Castelfranchi和Falcone设想的授权和采用理论中定义的不同帮助级别采用任务,从而适应自身的智能协作水平。除此之外,该架构还增强了机器人行为的透明性,因为该架构可以为机器人提供用于完成其委派任务的策略的全面解释的能力。我们提出了基于JaCaMo框架的认知体系结构的实现,该体系结构为实现多主体系统提供了支持,并集成了不同的多主体编程维度。

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