Maffioli Elisa M, Gonzalez Robert
Health Management and Policy, University of Michigan School of Public Health, Ann Arbor, MI, United States of America.
School of Economics, Georgia Institute of Technology, Atlanta, GA, United States of America.
PLOS Glob Public Health. 2022 Mar 16;2(3):e0000279. doi: 10.1371/journal.pgph.0000279. eCollection 2022.
We combine data on beliefs about the origin of the 2014 Ebola outbreak with two supervised machine learning methods to predict who is more likely to be misinformed. Contrary to popular beliefs, we uncover that, socio-demographic and economic indicators play a minor role in predicting those who are misinformed: misinformed individuals are not any poorer, older, less educated, more economically distressed, more rural, or ethnically different than individuals who are informed. However, they are more likely to report high levels of distrust, especially towards governmental institutions. By distinguishing between types of beliefs, distrust in the central government is the primary predictor of individuals assigning a political origin to the epidemic, while Muslim religion is the most important predictor of whether the individual assigns a supernatural origin. Instead, educational level has a markedly higher importance for ethnic beliefs. Taken together, the results highlight that government trust might play the most important role in reducing misinformation during epidemics.
我们将关于2014年埃博拉疫情起源的信念数据与两种监督式机器学习方法相结合,以预测谁更有可能被错误信息误导。与普遍看法相反,我们发现社会人口统计学和经济指标在预测被错误信息误导的人方面作用较小:被错误信息误导的个体在贫穷程度、年龄、受教育程度、经济困境程度、农村程度或种族方面与了解信息的个体并无差异。然而,他们更有可能报告高度的不信任,尤其是对政府机构的不信任。通过区分信念类型,对中央政府的不信任是个体将疫情归因于政治起源的主要预测因素,而穆斯林宗教则是个体将疫情归因于超自然起源的最重要预测因素。相反,教育水平对种族信念的重要性明显更高。综合来看,结果表明政府信任可能在疫情期间减少错误信息方面发挥最重要的作用。