论文标题

建立人类善良的知识融合(HAKF)支持分布式联盟团队

Towards human-agent knowledge fusion (HAKF) in support of distributed coalition teams

论文作者

Braines, Dave, Cerutti, Federico, Vilamala, Marc Roig, Srivastava, Mani, Preece, Lance Kaplan Alun, Pearson, Gavin

论文摘要

通过人与机器代理之间的敏捷组合可以实质上增强未来的联盟行动,但是在联盟环境中,这些代理商可能不熟悉人类用户,并希望在广泛的场景中运作,而不是出于特定目的而被狭义地定义。在这种情况下,必须通过适当的透明行为(例如,通过解释)快速建立对机器代理的信任。人类代理人还能够将其本地知识带给团队,观察情况正在发展,并决定应向机器代理传达哪些关键信息,以使他们能够更好地说明特定环境。在本文中,我们通过回顾关键要求来描述朝着这种人类知识融合(HAKF)环境的初始步骤,并解释了如何在示例情况下实现这些要求。我们展示了HAKF如何在复杂的事件处理设置中,为人类和机器代理带来了作为分布式联盟团队的一部分,并具有不确定来源的人类和机器代理。

Future coalition operations can be substantially augmented through agile teaming between human and machine agents, but in a coalition context these agents may be unfamiliar to the human users and expected to operate in a broad set of scenarios rather than being narrowly defined for particular purposes. In such a setting it is essential that the human agents can rapidly build trust in the machine agents through appropriate transparency of their behaviour, e.g., through explanations. The human agents are also able to bring their local knowledge to the team, observing the situation unfolding and deciding which key information should be communicated to the machine agents to enable them to better account for the particular environment. In this paper we describe the initial steps towards this human-agent knowledge fusion (HAKF) environment through a recap of the key requirements, and an explanation of how these can be fulfilled for an example situation. We show how HAKF has the potential to bring value to both human and machine agents working as part of a distributed coalition team in a complex event processing setting with uncertain sources.

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