基于深度模糊推理模型的知识获取及其在医学诊断中的应用

Y. Mori, Hirosato Seki, M. Inuiguchi
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引用次数: 2

摘要

本文减少了模糊推理模型中模糊规则的数量,将知识获取为模糊规则。通过在每一层中随机选择输入项的数量来减少用于推理模型的输入项的数量。因此,事实证明,与一次性使用所有原始输入项的推理模型相比,整个模型中的规则数量可以减少更多。然而,在Zhang之前的模型中,虽然学习了模糊规则的后项部分,但没有学习到前项部分。由于我们需要处理问题中没有先验知识的情况,需要从数据中获取知识,所以需要学习先行部分。本文提出了一种模糊规则中先验模糊集的学习方法,以便从实际数据中获得学习数据的输入和输出之间的关系。最后,将所提方法应用于糖尿病的医学诊断,并与所提方法的准确率进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Acquisition with Deep Fuzzy Inference Model and Its Application to a Medical Diagnosis
In this paper, we reduce the number of fuzzy rules in the fuzzy inference model and acquire knowledge as fuzzy rules. The number of input items used for the inference model is reduced by randomly selecting the number of input items in each layer. Therefore, it turns out that the number of rules in the whole of this model can be reduced more than that of rules in an inference model that uses all the original input items at one time. However, in the previous model by Zhang, although the consequent part of the fuzzy rule was learned, the antecedent part was not learned. Since we need to deal with the situation where there is no prior knowledge in the problem to apply and it will be necessary to acquire knowledge from data, it is required to learn the antecedent part. In this paper, we propose a learning method for the antecedent fuzzy sets in fuzzy rules in order to obtain relationship between input and output of the learning data from the actual data. Then, as an example, the proposed method is applied to medical diagnosis of diabetes, the accuracy of the previous method is compared with that of the proposed method.
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