基于回归逻辑算法的肝炎预测分析

G. V. Nivaan, A. Emanuel
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引用次数: 3

摘要

肝炎是一种肝脏炎症,是影响世界上各个年龄段数百万人健康的疾病之一。预测这种疾病的结果可以说是相当具有挑战性的,其中公共保健服务本身面临的主要挑战是由于早期阶段的临床诊断有限。因此,通过对现有数据利用机器学习技术,即通过总结诊断规则来了解肝炎患者数据的趋势,了解影响肝炎患者的因素,可以使诊断过程更加可靠,从而改善他们的医疗保健。可以用来进行这种预测过程的方法是回归技术。回归本身提供了自变量和因变量之间的关系。本研究使用UCI Machine Learning的肝炎疾病数据集,采用逻辑回归模型,分析结果准确率为83.33%。
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Analytic Predictive of Hepatitis using The Regression Logic Algorithm
Hepatitis is an inflammation of the liver which is one of the diseases that affects the health of millions of people in the world of all ages. Predicting the outcome of this disease can be said to be quite challenging, where the main challenge for public health care services itself is due to a limited clinical diagnosis at an early stage. So by utilizing machine learning techniques on existing data, namely by concluding diagnostic rules to see trends in hepatitis patient data and see what factors are affecting patients with hepatitis, can make the diagnosis process more reliable to improve their health care. The approach that can be used to carry out this prediction process is a regression technique. The regression itself provides a relationship between the independent variable and the dependent variable. By using the hepatitis disease dataset from UCI Machine Learning, this study applies a logistic regression model that provides analysis results with an accuracy rate of 83.33%.
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