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A RESEARCH ON THE RELATION BETWEEN TRAINING AMBIGUITY AND GENERALIZATION CAPABILITY

机译:培养歧义与泛化能力的关系研究

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The classification result of an example matching to fuzzy IF-THEN rules is usually a possibility distribution, which can be measured by the ambiguity. This paper attempts to find the relation between the ambiguity on training set and the testing accuracy (which is usually called the generalization capability)and tries to give a new criterion to evaluate the generalization capability of fuzzy decision trees. Suppose that we first make use of the fuzzy decision tree to generate a set of fuzzy IF-THEN rules and then pay particular attention to the training ambiguity by matching training examples and testing examples to the generated IF-THEN rules. Our experiments show an interesting result, that is, with the precondition that the training accuracy does not decrease, the higher the ambiguity of the training set is, the higher the testing accuracy is. Some explanations and speculation about this experimental result are given.
机译:与模糊IF-DEN-DEN规则匹配的示例匹配的分类结果通常是可能分布,可以通过歧义来衡量。本文试图找到培训集上模糊性与测试精度(通常称为泛化能力)之间的关系,并试图提供新的标准,以评估模糊决策树的泛化能力。假设我们首先利用模糊决策树来生成一组模糊IF-DEN-DEN规则,然后通过将训练示例和测试示例匹配到生成的IF-DEN规则来特别注意培训歧义。我们的实验表明了一个有趣的结果,即训练精度不会降低的前提,训练集的模糊性越高,测试精度越高。给出了关于该实验结果的一些解释和猜测。

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