An investigation of income inequality through autoregressive integrated moving average and regression analysis

John Wang , Zhi Kacie Pei , Yawei Wang , Zhaoqiong Qin
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Abstract

Income inequality is a prominent contributor to health disparities in the U.S. As a leading capitalist nation, the U.S. registers the highest healthcare expenditure among developed countries yet grapples with widening income disparities. The chasm between the rich and the underprivileged has expanded significantly in recent decades, profoundly impacting American society. This study explores the nuances of income inequality, its ramifications, and potential remedies, analyzed through the Gini Coefficient. Advanced forecasting models, including AutoRegressive Integrated Moving Average and Regression Analysis, are employed to anticipate future patterns. The research highlights the value of healthcare analytics in understanding the complexities of income inequality. The findings underscore the pressing need for effective policies to address this mounting challenge.

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通过自回归综合移动平均数和回归分析调查收入不平等问题
作为一个主要的资本主义国家,美国是发达国家中医疗支出最高的国家,但却面临着收入差距不断扩大的问题。近几十年来,富人与弱势群体之间的鸿沟显著扩大,对美国社会产生了深远影响。本研究通过对基尼系数的分析,探讨了收入不平等的细微差别、其影响以及潜在的补救措施。研究采用了先进的预测模型,包括自回归综合移动平均法和回归分析法,以预测未来的模式。研究强调了医疗保健分析在了解收入不平等的复杂性方面的价值。研究结果强调,迫切需要制定有效的政策来应对这一日益严峻的挑战。
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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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