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Neuromorphically Inspired Appraisal-Based Decision Making in a Cognitive Robot

机译:认知机器人中基于神经形态启发的评估决策

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Real-time search techniques have been used extensively in the areas of task planning and decision making. In order to be effective, however, these techniques require task-specific domain knowledge in the form of heuristic or utility functions. These functions can either be embedded by the programmer, or learned by the system over time. Unfortunately, many of the reinforcement learning techniques that might be used to acquire this knowledge generally demand static feature vector representations defined a priori. Current neurobiological research offers key insights into how the cognitive processing of experience may be used to alleviate dependence on preprogrammed heuristic functions, as well as on static feature representations. Research also suggests that internal appraisals are influenced by such processing and that these appraisals integrate with the cognitive decision-making process, providing a range of useful and adaptive control signals that focus, inform, and mediate deliberation. This paper describes a neuromorphically inspired approach for cognitively processing experience in order to: 1) abstract state information; 2) learn utility functions over this state abstraction; and 3) learn to tradeoff between performance and deliberation time.
机译:实时搜索技术已广泛用于任务计划和决策领域。然而,为了有效,这些技术需要启发式或实用功能形式的特定于任务的领域知识。这些功能可以由程序员嵌入,也可以由系统随时间学习。不幸的是,许多可用于获取该知识的强化学习技术通常要求先验定义的静态特征向量表示。当前的神经生物学研究提供了关于如何利用经验的认知处理来减轻对预编程的启发式功能以及静态特征表示的依赖的关键见解。研究还表明,内部评估会受到此类处理的影响,并且这些评估会与认知决策过程整合在一起,从而提供一系列有用,自适应的控制信号,从而集中,指导和调解审议过程。本文描述了一种神经形态启发方法来进行认知处理体验,以:1)抽象状态信息; 2)通过该状态抽象学习效用函数; 3)学会在性能和审议时间之间进行权衡。

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