Semi-Supervised Machine Learning Method for Predicting Observed Individual Risk Preference Using Gallup Data

Faroque Ahmed, Mrittika Shamsuddin, Tanzila Sultana, R. Shamsuddin
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Abstract

Risk and uncertainty play a vital role in almost every significant economic decision, and an individual’s propensity to make riskier decisions also depends on various circumstances. This article aims to investigate the effects of social and economic covariates on an individual’s willingness to take general risks and extends the scope of existing works by using quantitative measures of risk-taking from the GPS and Gallup datasets (in addition to the qualitative measures used in the literature). Based on the available observed risk-taking data for one year, this article proposes a semi-supervised machine learning-based approach that can efficiently predict the observed risk index for those countries/individuals for years when the observed risk-taking index was not collected. We find that linear models are insufficient to capture certain patterns among risk-taking factors, and non-linear models, such as random forest regression, can obtain better root mean squared values than those reported in past literature. In addition to finding factors that agree with past studies, we also find that subjective well-being influences risk-taking behavior.
利用盖洛普数据预测观察到的个人风险偏好的半监督机器学习方法
风险和不确定性在几乎所有重要的经济决策中都起着至关重要的作用,而个人做出风险较高决策的倾向也取决于各种情况。本文旨在研究社会和经济协变量对个人承担一般风险意愿的影响,并通过使用全球定位系统和盖洛普数据集(除文献中使用的定性指标外)中的风险承担定量指标,扩展了现有研究的范围。基于现有的观测到的一年风险承担数据,本文提出了一种基于半监督机器学习的方法,该方法可以有效地预测那些国家/个人在未收集到观测到的风险承担指数的年份的观测到的风险指数。我们发现,线性模型不足以捕捉风险承担因素之间的某些模式,而非线性模型(如随机森林回归)可以获得比以往文献报道更好的均方根值。除了发现与以往研究一致的因素外,我们还发现主观幸福感会影响冒险行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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