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Material Classification from Imprecise Chemical Composition: Probabilistic vs Possibilistic Approach

机译:来自不精确化学成分的材料分类:概率vs可能性方法

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In this paper we propose a method of explainable material classification from imprecise chemical compositions. The problem of classification from imprecise data is addressed with a fuzzy decision tree whose terms are learned by a clustering algorithm. We deduce fuzzy rules from the tree, which will provide a justification of the result of the classification. Two opposed approaches are compared: the probabilistic approach and the possibilistic approach.
机译:在本文中,我们提出了一种从不精确的化学成分中解释的材料分类方法。使用模糊决策树从不精确数据进行分类的问题,其术语由聚类算法学习。我们从树上推断出模糊规则,这将提供分类结果的理由。比较了两种反对方法:概率方法和可能的方法。

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