基于网格搜索cv的超参数调优:ELM方法激活函数对幼儿肺炎分类的比较

Pirjatullah, Dwi Kartini, D. T. Nugrahadi, Muliadi, Andi Farmadi
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引用次数: 13

摘要

肺炎是一种容易感染幼儿的疾病。根据卫生部的数据,五岁以下儿童因肺炎死亡的原因在所有五岁以下儿童死亡中排名第二。在加里曼丹,森林火灾是造成大量肺炎病例的原因之一。肺炎患者往往不知道自己感染了肺炎,因为出现的症状只是普通的疼痛,因此了解肺炎的症状非常重要。本研究根据症状因素对肺炎与非肺炎咳嗽进行分型。本研究使用的数据集是Martapura Timur健康中心的Poly MTBS。本研究使用的分类方法是极限学习机(Extreme Learning Machine, ELM)。分类过程从SMOTE上采样开始,这样做是为了平衡类,因为使用的类之间的数据量是不平衡的。然后在隐层神经元上使用GridsearchCV对参数进行超调,以确定在分类过程中用作推荐的最佳参数。在分类阶段使用ELM方法,通过对比试验数据集90:10、80:20、70:30、60:40、50:50,比较Binary Sigmoid、Sin、Hard Limit、triangle Base、Radial Base、Linear、Bipolar Sigmoid的激活函数。本研究使用三角基激活函数获得了86.36%的正确率、85%的精密度、100%的召回率、92%的F1 Score、训练数据比、90:10和3个隐藏层神经元的最佳性能结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperparameter Tuning using GridsearchCV on The Comparison of The Activation Function of The ELM Method to The Classification of Pneumonia in Toddlers
Pneumonia is a disease that is susceptible to attack toddlers. According to data from the Ministry of Health, the cause of under-five deaths due to pneumonia is number 2 of all under-five deaths. In Kalimantan, forest fires are one of the causes of the high number of pneumonia cases. Knowing the symptoms of the disease is very important, considering that sufferers often do not know that they have been exposed to Pneumonia because the symptoms that appear are just ordinary pain. In this study, the classification of Pneumonia and Non- Pneumonia Cough was carried out based on symptom factors. The dataset used in this study is the Poly MTBS at the Martapura Timur Health Center. The classification method used in this research is Extreme Learning Machine (ELM). The classification process starts from SMOTE upsampling, this is done to balance the classes, because the amount of data between classes used is not balanced. Then hyper tuning the parameters is done using GridsearchCV on the hidden layer neurons, to determine the best parameters that will be used as recommendations in the classification process. At the classification stage using the ELM method by comparing the activation functions of Binary Sigmoid, Sin, Hard Limit, Triangular Basis, Radial Base, Linear, and Bipolar Sigmoid by comparing test datasets 90:10, 80:20, 70:30, 60:40, and 50:50. This study provides the best performance results on the use of the Triangular Base activation function with 86.36% accuracy, 85% precision, 100% recall and 92% F1 Score, training data ratio, and testing 90:10 and 3 hidden layer neurons.
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