幼儿教育和医疗保健对儿童的影响

Tianshi Liu
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引用次数: 0

摘要

因果推断是一种统计方法,旨在了解和量化变量之间的因果关系,使我们能够确定一个变量对另一个变量的影响,同时考虑潜在的混杂因素。在本研究中,我们选择了婴儿健康与发展计划(IHDP)数据集来检验高质量的幼儿教育和医疗保健是否会提高他们的认知和学习能力。我们使用一些常见的经典算法来实现这项研究,计算数据集的 CATE(条件平均治疗效果),如果结果为负数,则表示早期治疗不会提高儿童的进一步能力;如果结果为正数,则表示治疗提高了儿童的进一步能力。将目标模型 BART(贝叶斯加性回归树)和 Metalearners 拟合到该数据集后,我们发现所有模型的 CATE 都是正数,这意味着这些早期治疗对儿童的未来发展产生了积极影响。此外,我们还可以根据 TE(治疗效果)的标准方差来判断哪个模型给出的结果更准确。这项研究的结果将为我们提供一个深刻的思路,即我们是否应该在教育和医疗方面对儿童进行一些治疗,以及哪种模型更适合这种随意推断检验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of early childhood education and medical care on children
Causal inference is a statistical approach that aims to understand and quantify the causal relationship between variables, allowing us to determine the impact of one variable on another while accounting for potential confounding factors. In this study, we chose the Infant Health and Development Program (IHDP) dataset to test whether high-quality early childhood education and medical care will enhance their cognitive and academic ability. We use some common and classic algorithms to achieve this study by calculating the CATE (Conditional Average Treatment Effect) of the dataset; if the result is a negative number, that means early treatment doesn’t improve children’s further ability; if the result is a positive number, that means treatment improves it. After fitting the targeted models, BART(Bayesian Additive Regression Trees) and Metalearners, into this dataset, we found out that all the models will get positive CATE, which means that these early treatments positively affect children’s future development. Also, we can judge which model gives us a more accurate result according to the standard variance of TE(treatment effect). The result of this study will provide us with an insightful idea about whether we should give children some treatments regarding education and medical care and which model is more suitable for this casual inference test.
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