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APPROXIMATE REASONING BASED ON LINGUISTIC MODIFIERS IN A LEARNING SYSTEM

机译:基于学习系统语言修饰器的近似推理

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Approximate reasoning, initially introduced in fuzzy logic context, allows reasoning with imperfect knowledge. We have proposed in a previous work an approximate reasoning based on linguistic modifiers in a symbolic context. To apply such reasoning, a base of rules is needed. We propose in this paper to use a supervised learning system named SUCRAGE, that automatically generates multi-valued classification rules. Our reasoning is used with this rule base to classify new objects. Experimental tests and comparative study with two initial reasoning modes of SUCRAGE are presented. This application of approximate reasoning based on linguistic modifiers gives satisfactory results. Besides, it provides a comfortable linguistic interpretation to the human mind thanks to the use of linguistic modifiers.
机译:最初在模糊逻辑上下文中引入的近似推理,允许推理不完美的知识。我们在先前的工作中提出了基于语言修饰在象征性背景下的近似推理。要应用这种推理,需要一个规则。我们提出本文使用名为Sucrage的监督学习系统,它会自动生成多值的分类规则。我们的推理与此规则库一起使用以对新对象进行分类。提出了两种初始推理模式的实验试验和对比研究。基于语言改性剂的近似推理的这种应用具有令人满意的结果。此外,由于使用语言改性剂,它为人类思想提供了一个舒适的语言解释。

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