糖尿病的诊断

Mohamed Benamina, B. Atmani, Sofia Benbelkacem
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引用次数: 0

摘要

归纳学习分类法的独创性在于,人们经常用它来解决和处理日常生活中非常复杂的情况。然而,人类的诱导往往是近似的,而不是精确的。的确,人类的大脑能够处理不精确、模糊、不确定和不完整的信息。此外,人类大脑能够在不确定性管理不可或缺的环境中学习和运作。本文根据归纳学习分类的特点,提出了一种模糊推理布尔模型,用于监控子计划的索引。几个相互竞争的动机使我们为CBR知识库系统定义了一个布尔模型。实际上,我们不仅希望实验一种新的模糊决策树案例索引方法,还希望改进自然语言概念的模糊和不确定建模,优化响应时间和存储复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DIAGNOSIS OF DIABETES
The classification by inductive learning finds its originality in the fact that humans often use it to resolve and to handle very complex situations in their daily lives. However, the induction in humans is often approximate rather than exact. Indeed, the human brain is able to handle imprecise, vague, uncertain and incomplete information. Also, the human brain is able to learn and to operate in a context where uncertainty management is indispensable. In this paper, we propose a Boolean model of fuzzy reasoning for indexing the monitoring sub-plans, based on characteristics of the classification by inductive learning. Several competing motivations have led us to define a Boolean model for CBR knowledge base systems. Indeed, we have not only desired experiment with a new approach to indexing of cases by fuzzy decision tree, but we also wanted to improve modelling of the vague and uncertain of the natural language concepts, optimize response time and the storage complexity.
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