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Multi-Level Counter Propagation Network for diabetes classification

机译:糖尿病分类的多层反传播网络

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The data mining techniques can be successfully used for the classification of patients suffering from diabetes. The classification can be done to find out categories such as not detected, initial stage, middle stage and advanced stage of diabetes. This study has undertaken only two class based classification of positive (diabetes detected) and negative (diabetes not detected) class. To perform the classification using data mining techniques, the input data are used from Pima Indian Diabetes (PID) sample data sets which is available as an open source. Three classification techniques of Radial Basis Function (RBF), Multi Layer Perceptron (MLP) and Multi Level Counter Propagation Network (MLCPN) are used to classify diabetes cased. The MLCPN functions in two phases, the first phase is Kohonen Self Organizing Map (KSOM) and second phase is Grossberg learning. Both the methods together make hybrid approach. Among the models analysed, the MLCPN produced better accuracy and efficiency. It was faster and an accuracy rate was approximately 97%. The simulation tests were performed using Weka software tool. A total of 519 datasets were used for training the models and as many remaining dataset were used for testing. Simulation results were on the lines of expectation with good accuracy.
机译:数据挖掘技术可以成功地用于糖尿病患者的分类。可以进行分类以找出未检测到的类别,糖尿病的初始阶段,中期和晚期。这项研究仅对阳性(检测出糖尿病)和阴性(未检测出糖尿病)进行了基于分类的两种分类。为了使用数据挖掘技术执行分类,输入数据来自可作为开放源使用的Pima印度糖尿病(PID)样本数据集。径向基函数(RBF),多层感知器(MLP)和多层计数器传播网络(MLCPN)的三种分类技术用于对病例进行糖尿病分类。 MLCPN分两个阶段运行,第一阶段是Kohonen自组织图(KSOM),第二阶段是Grossberg学习。两种方法共同构成了混合方法。在分析的模型中,MLPCN产生了更好的准确性和效率。它更快,准确率约为97%。使用Weka软件工具进行了仿真测试。总共519个数据集用于训练模型,而其余的数据集则用于测试。仿真结果符合预期,精度很高。

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