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Quantitatively Evaluating Formula-Variable Relevance by Forgetting

机译:通过遗忘定量评估公式变量相关性

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Forgetting is a feasible tool for weakening knowledge bases by focusing on the most important issues, and ignoring irrelevant, outdated, or even inconsistent information, in order to improve the efficiency of inference, as well as resolve conflicts in the knowledge base. Also, forgetting has connections with relevance between a variable and a formula. However, in the existing literature, the definition of relevance is "binary" -there are only the concepts of "relevant" and "irrelevant", and no means to evaluate the "degree" of relevance between variables and formulas. This paper presents a method to define the formula-variable relevance in a quantitative way, using the tool of variable forgetting, by evaluating the change of model set of a certain formula after forgetting a certain variable in it. We also discuss properties, examples and one possible application of the definition.
机译:遗忘是通过专注于最重要的问题削弱知识库的可行工具,忽略无关,过时或甚至不一致的信息,以提高推理的效率,以及知识库中的解决冲突。此外,忘记具有与变量和公式之间相关的连接。然而,在现有文献中,相关性的定义是“二进制” - 只是“相关”和“无关”的概念,也没有意味着评估变量和公式之间的相关性的“程度”。本文呈现了一种以定量方式定义公式变量相关性的方法,通过评估在忘记其中的某个变量之后的某个公式的模型集的变化来进行变量遗忘的工具。我们还讨论了定义的属性,示例和一个可能的应用。

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