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Hybrid architecture for situated learning of reactive sequential decision making

机译:用于反应式顺序决策的位置学习的混合架构

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摘要

In developing autonomous agents, one usually emphasizes only (situated) procedural knowledge, ignoring more explicit declarative knowledge. On the other hand, in developing symbolic reasoning models, one usually emphasizes only declarative knowledge, ignoring procedural knowledge. In contrast, we have developed a learning model CLARION, which is a hybrid connectionist model consisting of both localist and distributed representations, based on the two-level approach proposed in [40]. CLARION learns and utilizes both procedural and declarative knowledge, tapping into the synergy of the two types of processes, and enables an agent to learn in situated contexts and generalize resulting knowledge to different scenarios. It unifies connectionist, reinforcement, and symbolic learning in a synergistic way, to perform on-line, bottom-up learning. This summary paper presents one version of the architecture and some results of the experiments.
机译:在开发自主代理程序时,通常只强调(假定的)过程知识,而忽略更明确的声明性知识。另一方面,在开发符号推理模型时,通常只强调声明性知识,而忽略程序性知识。相比之下,我们基于[40]中提出的两级方法,开发了一个学习模型CLARION,它是一个由本地表示和分布式表示组成的混合连接模型。 CLARION学习和利用过程性知识和声明性知识,充分利用两种过程的协同作用,并使代理能够在处境中学习并将所获知识概括到不同的场景中。它以协同方式统一连接主义,强化和符号学习,以执行在线,自下而上的学习。这份摘要文件介绍了该架构的一种版本以及实验的一些结果。

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