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首页> 外文期刊>International Journal of Neural Systems >Perceptual Generalization and Context in a Network Memory Inspired Long-Term Memory for Artificial Cognition
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Perceptual Generalization and Context in a Network Memory Inspired Long-Term Memory for Artificial Cognition

机译:网络内存中的感知泛化和背景激发了人工认知的长期记忆

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摘要

In the framework of open-ended learning cognitive architectures for robots, this paper deals with the design of a Long-Term Memory (LTM) structure that can accommodate the progressive acquisition of experience-based decision capabilities, or what different authors call "automation" of what is learnt, as a complementary system to more common prospective functions. The LTM proposed here provides for a relational storage of knowledge nuggets given the form of artificial neural networks (ANNs) that is representative of the contexts in which they are relevant in a configural associative structure. It also addresses the problem of continuous perceptual spaces and the task- and context-related generalization or categorization of perceptions in an autonomous manner within the embodied sensorimotor apparatus of the robot. These issues are analyzed and a solution is proposed through the introduction of two new types of knowledge nuggets: P-nodes representing perceptual classes and C-nodes representing contexts. The approach is studied and its performance evaluated through its implementation and application to a real robotic experiment.
机译:在机器人的开放式学习认知架构的框架中,本文涉及长期内存(LTM)结构的设计,可以适应基于经验的决策能力的逐步获取,或者不同的作者称之为“自动化”学到的内容,作为更常见的潜在职能的补充制度。这里提出的LTM提供了给定具有代表它们在配置关联结构中相关的上下文的人工神经网络(ANNS)的形式的知识核实的关系存储。它还以自主方式在机器人的体现传感器设备内以自主方式解决了连续感知空间的问题以及与之相关的概括或对识别的问题。分析了这些问题,并通过引入两种新类型的知识块来提出解决方案:代表语言类和表示上下文的C节点的p节点。研究了方法,并通过其实施和应用来评估了真正的机器人实验。

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