通过正规化的卫生支出预测模型:低收入和中高收入经济体是否具有共同的预测因子?

Emmanuel Thompson, Faustine Williams
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引用次数: 0

摘要

世界各国目前面临着巨大的卫生保健挑战和卫生支出的巨大差异。在文献中,收入被认为是卫生支出的关键预测因素。然而,对于哪些其他变量可能与卫生支出中其余大部分无法解释的变化有关,没有达成一致意见。因此,本研究的目的是调查低收入和中低收入经济体中卫生支出与一些重要预测因素之间的联系。使用Lasso和Elastic net等正则化回归方法以及2013年世界银行数据确定卫生支出的关键预测因子。本研究表明,在低收入经济体的情况下,弹性网算法产生的模型比Lasso具有更好的预测能力。然而,在中低收入经济体的情况下,与弹性网相比,Lasso的预测能力略强。此外,收入仍然是这两个经济体卫生支出的共同预测指标。这项研究的结果对寻求通过关注人均卫生支出的关键预测指标(如预期寿命和人口密度)来减少卫生保健支出巨大差异对其经济的影响的政府是有价值的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predictive models of health expenditure via regularization: Do low and upper middle income economies share common predictors?

Predictive models of health expenditure via regularization: Do low and upper middle income economies share common predictors?

Predictive models of health expenditure via regularization: Do low and upper middle income economies share common predictors?

Countries around the world are presently confronted with gargantuan health care challenges and huge variability in health spending. In the literature, income has been recognized as a crucial predictor of health expenditure. However, there is no agreement on which other variables may be connected to the remaining largely unexplained variation in health expenditure. Therefore, the aim of the present study was to investigate the link between health expenditure and some important predictors among low-income and lower middle-income economies. Regularized regression methods including the Lasso and the Elastic net, and the 2013 World Bank data were used to identify key predictors of health expenditure. The present study showed that the Elastic net algorithm produced a model with a better predictive power than the Lasso in the case of low-income economies. However, the Lasso produced a slightly superior predictive power compared to the Elastic net in the case of lower middle-income economies. Also, income remains a common predictor of health expenditure in both economies. Findings of the study would be valuable to governments seeking to lessen the impact of vast variability in health care spending on their economies by focusing on key predictors of health expenditure per capita, such as life expectancy and population density.

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