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GAWDN-NFIS: Neural-Fuzzy Inference System with a Genetic Algorithm Based on Weighted Data Normalization and Its Application in Medicine

机译:GAWDN-NFIS:基于加权数据归一化的遗传算法的神经模糊推理系统及其在医学中的应用

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This paper introduces an approach of Neural­ Fuzzy Inference System (NFIS) with a Genetic Algorithm (GA) based on Weighted Data Normalization (WDN) and its application in a medical decision support system. The WDN method optimizes the data normalization ranges for the input variables of the neural ­fuzzy inference system and a genetic algorithm is used as part of the WDN method. A steepest descent algorithm (BP) is used for NFIS learning on the normalized data set. The derived weights have the meaning of feature importance and can be used for feature selection to decrease the number of input variables. The GAWDN-NFIS is illustrated on the case study: a real medical decision support problem of estimating the survival of haemodialysis patients. This approach can also be applied to other distance-based, prototype learning neural network or fuzzy inference models.
机译:介绍了一种基于加权数据归一化(WDN)的遗传算法(GA)的神经模糊推理系统(NFIS)及其在医疗决策支持系统中的应用。 WDN方法为神经模糊推理系统的输入变量优化了数据归一化范围,并且遗传算法被用作WDN方法的一部分。最速下降算法(BP)用于对归一化数据集进行NFIS学习。导出的权重具有特征重要性的含义,可用于特征选择以减少输入变量的数量。案例研究说明了GAWDN-NFIS:估算血液透析患者存活率的真正医学决策支持问题。该方法也可以应用于其他基于距离的原型学习神经网络或模糊推理模型。

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