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首页> 外文期刊>Frontiers in Neurorobotics >Pragmatic Frames for Teaching and Learning in Human–Robot Interaction: Review and Challenges
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Pragmatic Frames for Teaching and Learning in Human–Robot Interaction: Review and Challenges

机译:人机交互中的教学框架:回顾与挑战

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One of the big challenges in robotics today is to learn from human users that are inexperienced in interacting with robots but yet are often used to teach skills flexibly to other humans and to children in particular. A potential route toward natural and efficient learning and teaching in Human-Robot Interaction (HRI) is to leverage the social competences of humans and the underlying interactional mechanisms. In this perspective, this article discusses the importance of pragmatic frames as flexible interaction protocols that provide important contextual cues to enable learners to infer new action or language skills and teachers to convey these cues. After defining and discussing the concept of pragmatic frames, grounded in decades of research in developmental psychology, we study a selection of HRI work in the literature which has focused on learning–teaching interaction and analyze the interactional and learning mechanisms that were used in the light of pragmatic frames. This allows us to show that many of the works have already used in practice, but not always explicitly, basic elements of the pragmatic frames machinery. However, we also show that pragmatic frames have so far been used in a very restricted way as compared to how they are used in human–human interaction and argue that this has been an obstacle preventing robust natural multi-task learning and teaching in HRI. In particular, we explain that two central features of human pragmatic frames, mostly absent of existing HRI studies, are that (1) social peers use rich repertoires of frames, potentially combined together, to convey and infer multiple kinds of cues; (2) new frames can be learnt continually, building on existing ones, and guiding the interaction toward higher levels of complexity and expressivity. To conclude, we give an outlook on the future research direction describing the relevant key challenges that need to be solved for leveraging pragmatic frames for robot learning and teaching.
机译:当今机器人技术的最大挑战之一是向缺乏与机器人互动经验的人类用户学习,但他们经常被用来向其他人类尤其是儿童灵活地教授技能。在人机交互(HRI)中实现自然有效的学与教的潜在途径是利用人的社交能力和潜在的交互机制。从这个角度出发,本文讨论了实用框架作为灵活的交互协议的重要性,该协议提供了重要的上下文线索,使学习者能够推断出新的动作或语言技能,并且教师可以传达这些线索。在以发展心理学的数十年研究为基础定义并讨论了语用框架的概念之后,我们研究了文献中精选的HRI工作,这些工作着重于学习与教学的互动,并分析了互动和学习机制。实用框架。这使我们能够证明,许多作品已经在实践中但并非总是明确地使用了实用框架机械的基本要素。但是,我们还表明,与在人与人的交互中使用务实框架相比,到目前为止,务实框架的使用方式非常有限,并认为这是阻碍HRI进行强大的自然多任务学习和教学的障碍。特别是,我们解释说,人类实用框架的两个主要特征是:(1)社交同龄人使用框架的丰富曲目,可能将它们组合在一起,以传达和推断多种线索。 (2)可以在现有框架的基础上不断学习新框架,并指导交互朝着更高层次的复杂性和表达能力发展。总而言之,我们对未来的研究方向进行了展望,描述了利用实用框架进行机器人学与教需要解决的相关关键挑战。

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