Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/110721
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Title: Psychological predictors of socioeconomic resilience amidst the COVID-19 pandemic : evidence from machine learning
Authors: Sheetal, A 
Ma, A
Infurna, FJ
Issue Date: Nov-2024
Source: American psychologist, Nov. 2024, v. 79, no. 8, p. 1139-1154
Abstract: What predicts cross-country differences in the recovery of socioeconomic activity from the COVID-19 pandemic? To answer this question, we examined how quickly countries’ socioeconomic activity bounced back to normalcy from disruptions caused by the COVID-19 pandemic based on residents’ attitudes, values, and beliefs as measured in the World Values Survey. We trained nine preregistered machine learning models to predict the rate at which various socioeconomic metrics (e.g., public transportation occupancy, cinema attendance) recovered from their COVID-19 lows based on the World Values Survey. All models had high predictive accuracy when presented with out-of-sample data (rs ≥ .83). Feature importance analyses identified five psychological predictors that most strongly predicted socioeconomic recovery from COVID-19: religiosity, liberal social attitudes, the value of independence, obedience to authority, and the Protestant work ethic. Although past research has established the role of religiosity, liberalism, and independence in predicting resilience, it has not yet considered obedience to authority or the Protestant work ethic. Thus, the current research suggests new directions for future work on resilience that may not be apparent from either a deductive or an inductive approach.
Keywords: COVID-19
Deep learning
Machine learning
Neural networks
Resilience
Publisher: American Psychological Association
Journal: American psychologist 
ISSN: 0003-066X
EISSN: 1935-990X
DOI: 10.1037/amp0001329
Research Data: https://osf.io/d9u5k
Rights: © 2024 American Psychological Association. This paper is not the copy of record and may not exactly replicate the authoritative document published in the APA journal. The final article is available, upon publication, at: https://doi.org/10.1037/amp0001329.
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