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Generating fuzzy rules for constructing interpretable classifier of diabetes disease

机译:生成模糊规则以构建可解释的糖尿病疾病分类器

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Diabetes is a type of disease in which the body fails to regulate the amount of glucose necessary for the body. It does not allow the body to produce or properly use insulin. Diabetes has widespread fallout, with a large people affected by it in world. In this paper; we demonstrate that a fuzzy c-means-neuro-fuzzy rule-based classifier of diabetes disease with an acceptable interpretability is obtained. The accuracy of the classifier is measured by the number of correctly recognized diabetes record while its complexity is measured by the number of fuzzy rules extracted. Experimental results show that the proposed fuzzy classifier can achieve a good tradeoff between the accuracy and interpretability. Also the basic structure of the fuzzy rules which were automatically extracted from the UCI Machine learning database shows strong similarities to the rules applied by human experts. Results are compared to other approaches in the literature. The proposed approach gives more compact, interpretable and accurate classifier.
机译:糖尿病是一种疾病,其中身体无法调节身体所需的葡萄糖量。它不允许身体产生或正确使用胰岛素。糖尿病具有广泛的影响,世界上有很多人受到糖尿病的影响。本文我们证明获得了具有可接受解释性的基于模糊c-均值-神经模糊的糖尿病疾病分类器。分类器的准确性通过正确识别的糖尿病记录的数量来衡量,而其复杂度则通过提取的模糊规则的数量来衡量。实验结果表明,所提出的模糊分类器可以在准确性和可解释性之间取得良好的折衷。从UCI机器学习数据库中自动提取的模糊规则的基本结构也显示出与人类专家应用的规则的强烈相似之处。将结果与文献中的其他方法进行比较。所提出的方法给出了更紧凑,可解释和准确的分类器。

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