A vision for human-machine mutual understanding, trust establishment, and collaboration

C. Azevedo, K. Raizer, Ricardo S. Souza
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引用次数: 18

Abstract

Human-machine interactions are likely to require synergistic multidisciplinary research efforts for supporting a paradigm shift towards collaborative-oriented use cases. An essential aspect of collaboration is trust and in order to establish it there is need for human-machine mutual understanding (HMMU). We argue that achieving HMMU will require evolving from an approach that reduces human factors as uncontrollable environmental elements, to one that repositions human emotions not only as a central part of an integrated control paradigm, but also as interpretable and steerable through appropriate information flows and mutual learning cycles. On the strategic decision-making side, we argue conflict resolution will require anticipating multiple trade-off situations that include human factors. On the operational level, symbiotic human-machine cognitive architectures should embed detected human emotions as inputs in shared machine control models. Trust measurements will play the role of mediating task coordination by pinpointing and dynamically composing appropriate situation-aware interaction protocols. In addition to a vision for HMMU, this paper proposes a multidisciplinary research strategy that attempts to unify the isolated efforts of different communities. The proposed vision is contextualized within a high-level research roadmap to support near and long-term activities in HMMU.
人机相互理解、建立信任和协作的愿景
人机交互可能需要协同的多学科研究努力,以支持向面向协作的用例的范式转变。协作的一个基本方面是信任,为了建立信任,需要人机相互理解(HMMU)。我们认为,实现HMMU需要从一种减少人为因素作为不可控环境因素的方法发展到一种重新定位人类情感的方法,这种方法不仅将人类情感重新定位为综合控制范式的核心部分,而且通过适当的信息流和相互学习循环来解释和指导人类情感。在战略决策方面,我们认为解决冲突需要预测包括人为因素在内的多种权衡情况。在操作层面,共生的人机认知架构应该将检测到的人类情感作为输入嵌入到共享的机器控制模型中。信任度量将通过精确定位和动态组合适当的情境感知交互协议来发挥任务协调的中介作用。除了HMMU的愿景之外,本文还提出了一种多学科研究策略,试图统一不同社区的孤立努力。提议的愿景在高级别研究路线图中进行了背景化,以支持HMMU的近期和长期活动。
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