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Machine learning approach for predicting under-five mortality determinants in Ethiopia: evidence from the 2016 Ethiopian Demographic and Health Survey

机译:从埃塞俄比亚预测五个死亡率决定因素的机器学习方法:来自2016年埃塞俄比亚人口和健康调查的证据

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There is a dearth of literature on the use of machine learning models to predict important under-five mortality risks in Ethiopia. In this study, we showed spatial variations of under-five mortality and used machine learning models to predict its important sociodemographic determinants in Ethiopia. The study data were drawn from the 2016 Ethiopian Demographic and Health Survey. We used three machine learning models such as random forests, logistic regression, and K-nearest neighbors as well as one traditional logistic regression model to predict under-five mortality determinants. For each machine learning model, measures of model accuracy and receiver operating characteristic curves were used to evaluate the predictive power of each model. The descriptive results show that there are considerable regional variations in under-five mortality rates in Ethiopia. The under-five mortality prediction ability was found to be between 46.3 and 67.2% for the models considered, with the random forest model (67.2%) showing the best performance. The best predictive model shows that household size, time to the source of water, breastfeeding status, number of births in the preceding 5 years, sex of a child, birth intervals, antenatal care, birth order, type of water source, and mother’s body mass index play an important role in under-five mortality levels in Ethiopia. The random forest machine learning model produces a better predictive power for estimating under-five mortality risk factors and may help to improve policy decision-making in this regard. Childhood survival chances can be improved considerably by using these important factors to inform relevant policies.
机译:利用机器学习模型在埃塞俄比亚预测重要的下列死亡率风险中,有一种缺乏的文献。在这项研究中,我们显示出五个死亡率和使用机器学习模型的空间变化,以预测其重要的埃塞俄比亚的重要组织决定因素。研究数据来自2016年埃塞俄比亚人口和健康调查。我们使用了三种机器学习模型,如随机森林,逻辑回归和k最近邻居以及传统的逻辑回归模型,以预测五个死亡率决定簇。对于每种机器学习模型,模型精度和接收器操作特性曲线的测量用于评估每个模型的预测力。描述性结果表明,埃塞俄比亚的五个死亡率下存在相当大的区域变化。对于所考虑的模型,发现较低的五个死亡率预测能力在46.3和67.2%之间,随机林模型(67.2%)显示出最佳性能。最好的预测模型表明,家庭规模,时间到水源,母乳喂养状态,前5年的出生数,儿童的性别,出生间隔,产前护理,出生秩序,水源类型和母亲的身体大众指数在埃塞俄比亚的五个死亡率水平中发挥着重要作用。随机森林机器学习模型产生更好的预测力,以估算五个死亡率风险因素,并有助于改善这方面的政策决策。通过使用这些重要因素可通知相关政策,可以大大提高儿童生存机会。

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