基于非支配排序遗传算法NSGA-II的高效甲状腺疾病预测系统

S. Kurnaz, Mohammed Sami Mohammed, S. Mohammed
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引用次数: 2

摘要

尽管医院、卫生保健机构和网站上有患者的数据,但仍然很难收集,特别是对于甲状腺疾病这样的风险疾病。采用非排序遗传算法对新模型进行行约简,采用三种数据挖掘技术选择属性,从而更快、更准确地检测甲状腺疾病。本设计使用两种甲状腺疾病,每种类型4个不同的类别,另外使用500+972,29个属性分别作为训练和测试数据,交叉验证=5。采用精度、精度等参数对模型的性能进行了评价。研究了该模型的全部特征和部分特征,并与序列模型进行了比较。本文还用散点图和曲线下面积来表示训练数据的分类预测增强。
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A High Efficiency Thyroid Disorders Prediction System with Non-Dominated Sorting Genetic Algorithm NSGA-II as a Feature Selection Algorithm
In spite of availability of patient's data in hospitals, health care institute and websites but still hard to collected especially for a risk disease like thyroid disorders. A new model by using Non Sorting Genetic Algorithm are selected for rows reductions and attributes selected with a three data mining techniques for a faster and accurate thyroid disorders detection. Two types of thyroid disorders with 4 different classes for each type are used for this design, in addition 500+972 are used with 29 attributes as training and testing data respectively with cross validation=5. Performances of this model are measured by using some parameter as accuracy , precision , etc. This model is studied for using all/some features with the proposed model and compare it with Sequential model. A scatter plot and area under curve are also presented in this work for training data to show the classes predication enhancement.
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