Using machine learning to identify important predictors of COVID-19 infection prevention behaviors during the early phase of the pandemic

Caspar J van Lissa,Wolfgang Stroebe,Michelle R vanDellen,N Pontus Leander,Maximilian Agostini,Tim Draws, Andrii Grygoryshyn,Ben Gützgow,Jannis Kreienkamp, Clara S Vetter,Georgios Abakoumkin,Jamilah Hanum Abdul Khaiyom,Vjolica Ahmedi,Handan Akkas,Carlos A Almenara,Mohsin Atta,Sabahat Cigdem Bagci,Sima Basel,Edona Berisha Kida,Allan B I Bernardo,Nicholas R Buttrick,Phatthanakit Chobthamkit,Hoon-Seok Choi,Mioara Cristea,Sára Csaba,Kaja Damnjanović,Ivan Danyliuk,Arobindu Dash,Daniela Di Santo,Karen M Douglas,Violeta Enea,Daiane Gracieli Faller,Gavan J Fitzsimons,Alexandra Gheorghiu,Ángel Gómez,Ali Hamaidia,Qing Han,Mai Helmy,Joevarian Hudiyana,Bertus F Jeronimus,Ding-Yu Jiang,Veljko Jovanović,Željka Kamenov,Anna Kende,Shian-Ling Keng,Tra Thi Thanh Kieu,Yasin Koc,Kamila Kovyazina,Inna Kozytska,Joshua Krause,Arie W Kruglanksi,Anton Kurapov,Maja Kutlaca,Nóra Anna Lantos,Edward P Lemay,Cokorda Bagus Jaya Lesmana,Winnifred R Louis,Adrian Lueders,Najma Iqbal Malik,Anton P Martinez,Kira O McCabe,Jasmina Mehulić,Mirra Noor Milla,Idris Mohammed,Erica Molinario,Manuel Moyano,Hayat Muhammad,Silvana Mula,Hamdi Muluk,Solomiia Myroniuk,Reza Najafi,Claudia F Nisa,Boglárka Nyúl,Paul A O'Keefe,Jose Javier Olivas Osuna,Evgeny N Osin,Joonha Park,Gennaro Pica,Antonio Pierro,Jonas H Rees,Anne Margit Reitsema,Elena Resta,Marika Rullo,Michelle K Ryan,Adil Samekin,Pekka Santtila,Edyta M Sasin,Birga M Schumpe,Heyla A Selim,Michael Vicente Stanton,Samiah Sultana,Robbie M Sutton,Eleftheria Tseliou,Akira Utsugi,Jolien Anne van Breen,Kees Van Veen,Alexandra Vázquez,Robin Wollast,Victoria Wai-Lan Yeung,Somayeh Zand,Iris Lav Žeželj,Bang Zheng,Andreas Zick,Claudia Zúñiga,Jocelyn J Bélanger

Patterns(2022)

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摘要
Before vaccines for coronavirus disease 2019 (COVID-19) became available, a set of infection-prevention behaviors constituted the primary means to mitigate the virus spread. Our study aimed to identify important predictors of this set of behaviors. Whereas social and health psychological theories suggest a limited set of predictors, machine-learning analyses can identify correlates from a larger pool of candidate predictors. We used random forests to rank 115 candidate correlates of infection-prevention behavior in 56,072 participants across 28 countries, administered in March to May 2020. The machine-learning model predicted 52% of the variance in infection-prevention behavior in a separate test sample—exceeding the performance of psychological models of health behavior. Results indicated the two most important predictors related to individual-level injunctive norms. Illustrating how data-driven methods can complement theory, some of the most important predictors were not derived from theories of health behavior—and some theoretically derived predictors were relatively unimportant.
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machine learning,COVID-19,health behaviors,social norms,public goods dilemma,random forest
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