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Predicting the Effect of Parental Education and Income on Infant Mortality Through Statistical Learning

机译:通过统计学习预测父母教育和收入对婴儿死亡率的影响

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Parental education, income per capita and health service indicators are the three most important determinants of child mortality. In this paper, we explored the influence of parental education and per capita income on infant mortality rate (IMR) using higher degree polynomial ridge regression. The polynomial regression analysis draws valid inferences about IMR based on an analysis of a representative sample of infants. Results from such analysis can be generalized to the larger population which is a predictive model in the form of a set of equations. This study estimated the comparative importance of mean years of male schooling, female schooling and per capita income on reducing the IMR with the statistical learning from the regression perspective. Results and analysis shows the importance of the parental education levels in reducing IMR. Moreover, female education, especially in lower grades are found significantly important in reducing IMR.
机译:父母教育,人均收入和保健服务指标是儿童死亡率的三个最重要的决定因素。在本文中,我们使用较高次多项式岭回归分析了父母教育和人均收入对婴儿死亡率的影响。多项式回归分析基于对婴儿代表性样本的分析得出有关IMR的有效推论。这种分析的结果可以推广到更大的人群,这是一组方程形式的预测模型。这项研究从回归的角度估计了男性学习,女性学习和人均收入的平均年数对减少IMR的统计学习的相对重要性。结果和分析表明,父母教育水平对于降低IMR的重要性。此外,发现女性教育,特别是低年级的教育对于减少IMR至关重要。

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