论文标题
进入4mat:广义多代理团队的蜂群牧羊本体
Onto4MAT: A Swarm Shepherding Ontology for Generalised Multi-Agent Teaming
论文作者
论文摘要
近年来,多代理团队的研究大大增加,基于知识的系统支持组合流程通常着重于提供功能(交流)解决方案,以使团队有意义地对方向行事。使人类能够有效地与一群自主认知剂进行有效互动和团队是人类浪费团队研究的一项开放研究挑战,部分原因是着重于开发支持这些系统的促成体系结构。通常,代理之间的双向透明度和共同的语义理解并未优先考虑人类浪费的团队中设计的机制,可能会限制人和群体团队如何通过概念和上下文\ textemdash分享理解和信息\ TextEmdash数据,以实现目标。为了解决这个问题,我们提供了一种正式的知识表示设计,使群人工智能能够对其环境和系统进行推理,最终实现共同的目标。我们提出了通用多代理团队的本体,即4MAT,以通过以生物学启发的牧羊人的方式在人类和团队之间进行更有效的团队。
Research in multi-agent teaming has increased substantially over recent years, with knowledge-based systems to support teaming processes typically focused on delivering functional (communicative) solutions for a team to act meaningfully in response to direction. Enabling humans to effectively interact and team with a swarm of autonomous cognitive agents is an open research challenge in Human-Swarm Teaming research, partially due to the focus on developing the enabling architectures to support these systems. Typically, bi-directional transparency and shared semantic understanding between agents has not prioritised a designed mechanism in Human-Swarm Teaming, potentially limiting how a human and a swarm team can share understanding and information\textemdash data through concepts and contexts\textemdash to achieve a goal. To address this, we provide a formal knowledge representation design that enables the swarm Artificial Intelligence to reason about its environment and system, ultimately achieving a shared goal. We propose the Ontology for Generalised Multi-Agent Teaming, Onto4MAT, to enable more effective teaming between humans and teams through the biologically-inspired approach of shepherding.