基于合作agent的本体片段协同学习

Heather S. Packer, Nicholas Gibbins, N. Jennings
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引用次数: 5

摘要

协作代理要么需要事先就它们用于通信的共享词汇表达成一致,要么需要在它们的私有本体之间进行某种转换。因此,使代理能够构建共享词汇表的技术允许它们共享和学习新概念,因此在多种情况下需要这些概念时是有益的。但是,如果不能以有效的方式执行此操作,则代理的性能可能会受到在大型增强本体上进行推断所需时间的不利影响,从而在搜索和救援等时间关键场景中导致问题。在本文中,我们提出了一种新技术,使智能体能够将精心选择的概念扩展到他们的本体中。我们将这种通用方法置于《RoboCup Rescue》领域中。具体来说,我们通过经验评估表明,与其他最先进的基准方法相比,我们的方法节省了更多的平民,降低了城市烧毁的百分比,并且花费了最少的时间访问其本体。
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Collaborative Learning of Ontology Fragments by Co-operating Agents
Collaborating agents require either prior agreement on the shared vocabularies that they use for communication, or some means of translating between their private ontologies. Thus, techniques that enable agents to build shared vocabularies allow them to share and learn new concepts, and are therefore beneficial when these concepts are required on multiple occasions. However, if this is not carried out in an effective manner then the performance of an agent may be adversely affected by the time required to infer over large augmented ontologies, so causing problems in time-critical scenarios such as search and rescue. In this paper, we present a new technique that enables agents to augment their ontology with carefully selected concepts into their ontology. We contextualise this generic approach in the domain of RoboCup Rescue. Specifically, we show, through empirical evaluation, that our approach saves more civilians, reduces the percentage of the city burnt, and spends the least amount of time accessing its ontology compared with other state of the art benchmark approaches.
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