使用世界幸福指数和人类发展指标分析生活质量的机器学习

A. Jannani, N. Sael, F. Benabbou
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引用次数: 1

摘要

机器学习算法在分析各个领域研究中的复杂数据方面发挥着重要作用。本文基于2015 - 2021年人类发展指数和世界幸福指数的数据,运用多元回归算法和统计技术,研究了客观和主观生活质量指标之间的关系,揭示了国际层面影响幸福感的关键因素。Pearson相关分析显示,幸福感与HDI得分和人均GNI相关。预测幸福感的最佳模型是随机森林回归,R2值为0.93667,均方根误差为0.0033048,均方根误差为0.05748,其次是XGBoost回归和决策树回归。这些模型表明,人均国民总收入是预测幸福的最重要特征。
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Machine learning for the analysis of quality of life using the World Happiness Index and Human Development Indicators
Machine learning algorithms play an important role in analyzing complex data in research across various fields. In this paper, we employ multiple regression algorithms and statistical techniques to investigate the relationship between objective and subjective quality of life indicators and reveal the key factors affecting happiness at the international level based on data from the Human Development Index and the World Happiness Index covering the period from 2015 to 2021. The Pearson correlation analysis showed that happiness is related to the HDI score and GNI per capita. The best-performing model for forecasting happiness was the random forest regression, with a R2 score of 0.93667, a mean squared error of 0.0033048, and a root mean squared error of 0.05748, followed by the XGBoost regression and the Decision Tree regression, respectively. These models indicated that GNI per capita is the most significant feature in predicting happiness.
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来源期刊
Mathematical Modeling and Computing
Mathematical Modeling and Computing Computer Science-Computational Theory and Mathematics
CiteScore
1.60
自引率
0.00%
发文量
54
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