Architectures that implement the Common Model of Cognition - Soar, ACT-R, and Sigma - have a prominent place in research on cognitive modeling as well as on designing complex intelligent agents. In this paper, we explore how computational models of analogical processing can be brought into these architectures to enable concept acquisition from examples obtained interactively. We propose a new analogical concept memory for Soar that augments its current system of declarative long-term memories. We frame the problem of concept learning as embedded within the larger context of interactive task learning (ITL) and embodied language processing (ELP). We demonstrate that the analogical learning methods implemented in the proposed memory can quickly learn a diverse types of novel concepts that are useful not only in recognition of a concept in the environment but also in action selection. Our approach has been instantiated in an implemented cognitive system AILEEN and evaluated on a simulated robotic domain.
翻译:实施共同认知模型的“共同认知模型”的架构 — — 远方、ACT-R和Sigma — — 在认知模型研究和设计复杂智能剂的研究中占有突出地位。 在本文中,我们探讨了如何将模拟处理的计算模型引入这些架构,以便能够从互动获得的范例中获取概念。我们提出了一个新的“远方”模拟概念记忆,以强化其当前的宣示性长期记忆系统。我们把概念学习问题设定为包含在互动任务学习(ITL)和体现语言处理(ELP)的大背景下的。我们证明,在拟议记忆中实施的模拟学习方法可以迅速学习多种新型概念,不仅在承认环境中的概念方面有用,而且在行动选择方面也有用。我们的方法已经在一个已实施的认知系统AILEEN中即刻化,并在一个模拟机器人域上进行了评估。