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An Approach for Generalising Symbolic Knowledge

机译:一种义目象征知识的方法

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Many researchers and developers of knowledge based systems (KBS) have been incorporating the notion of context. However, they generally treat context as a static entity, neglecting many connectionists' work in learning hidden and dynamic contexts, which aids generalization. This paper presents a method that models hidden context within a symbolic domain achieving a level of generalisation. Results indicate that the method can learn the information that experts have difficulty providing by generalising the captured knowledge.
机译:基于知识系统(KBS)的许多研究人员和开发人员都纳入了上下文的概念。然而,它们通常将上下文视为静态实体,忽视许多连接人员在学习隐藏和动态背景下的工作,辅助泛化。本文介绍了一种模型隐藏上下文,在实现概括级别的符号域中模拟隐藏的上下文。结果表明,该方法可以了解专家难以授予捕获的知识的难以提供的信息。

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