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Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries

Voluntary isolation is one of the most effective methods for individuals to help prevent the transmission of diseases such as COVID-19. Understanding why people leave their homes when advised not to do so and identifying what contextual factors predict this non-compliant behavior is essential for po...

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Autores principales: Hajdu, Nandor, Schmidt, Kathleen, Acs, Gergely, Röer, Jan P., Mirisola, Alberto, Giammusso, Isabella, Arriaga, Patrícia, Ribeiro, Rafael, Dubrov, Dmitrii, Grigoryev, Dmitry, Arinze, Nwadiogo C., Voracek, Martin, Stieger, Stefan, Adamkovic, Matus, Elsherif, Mahmoud, Kern, Bettina M. J., Barzykowski, Krystian, Ilczuk, Ewa, Martončik, Marcel, Ropovik, Ivan, Ruiz-Fernandez, Susana, Baník, Gabriel, Ulloa, José Luis, Aczel, Balazs, Szaszi, Barnabas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9704675/
https://www.ncbi.nlm.nih.gov/pubmed/36441720
http://dx.doi.org/10.1371/journal.pone.0276970
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author Hajdu, Nandor
Schmidt, Kathleen
Acs, Gergely
Röer, Jan P.
Mirisola, Alberto
Giammusso, Isabella
Arriaga, Patrícia
Ribeiro, Rafael
Dubrov, Dmitrii
Grigoryev, Dmitry
Arinze, Nwadiogo C.
Voracek, Martin
Stieger, Stefan
Adamkovic, Matus
Elsherif, Mahmoud
Kern, Bettina M. J.
Barzykowski, Krystian
Ilczuk, Ewa
Martončik, Marcel
Ropovik, Ivan
Ruiz-Fernandez, Susana
Baník, Gabriel
Ulloa, José Luis
Aczel, Balazs
Szaszi, Barnabas
author_facet Hajdu, Nandor
Schmidt, Kathleen
Acs, Gergely
Röer, Jan P.
Mirisola, Alberto
Giammusso, Isabella
Arriaga, Patrícia
Ribeiro, Rafael
Dubrov, Dmitrii
Grigoryev, Dmitry
Arinze, Nwadiogo C.
Voracek, Martin
Stieger, Stefan
Adamkovic, Matus
Elsherif, Mahmoud
Kern, Bettina M. J.
Barzykowski, Krystian
Ilczuk, Ewa
Martončik, Marcel
Ropovik, Ivan
Ruiz-Fernandez, Susana
Baník, Gabriel
Ulloa, José Luis
Aczel, Balazs
Szaszi, Barnabas
author_sort Hajdu, Nandor
collection PubMed
description Voluntary isolation is one of the most effective methods for individuals to help prevent the transmission of diseases such as COVID-19. Understanding why people leave their homes when advised not to do so and identifying what contextual factors predict this non-compliant behavior is essential for policymakers and public health officials. To provide insight on these factors, we collected data from 42,169 individuals across 16 countries. Participants responded to items inquiring about their socio-cultural environment, such as the adherence of fellow citizens, as well as their mental states, such as their level of loneliness and boredom. We trained random forest models to predict whether someone had left their home during a one week period during which they were asked to voluntarily isolate themselves. The analyses indicated that overall, an increase in the feeling of being caged leads to an increased probability of leaving home. In addition, an increased feeling of responsibility and an increased fear of getting infected decreased the probability of leaving home. The models predicted compliance behavior with between 54% and 91% accuracy within each country’s sample. In addition, we modeled factors leading to risky behavior in the pandemic context. We observed an increased probability of visiting risky places as both the anticipated number of people and the importance of the activity increased. Conversely, the probability of visiting risky places increased as the perceived putative effectiveness of social distancing decreased. The variance explained in our models predicting risk ranged from < .01 to .54 by country. Together, our findings can inform behavioral interventions to increase adherence to lockdown recommendations in pandemic conditions.
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spelling pubmed-97046752022-11-29 Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries Hajdu, Nandor Schmidt, Kathleen Acs, Gergely Röer, Jan P. Mirisola, Alberto Giammusso, Isabella Arriaga, Patrícia Ribeiro, Rafael Dubrov, Dmitrii Grigoryev, Dmitry Arinze, Nwadiogo C. Voracek, Martin Stieger, Stefan Adamkovic, Matus Elsherif, Mahmoud Kern, Bettina M. J. Barzykowski, Krystian Ilczuk, Ewa Martončik, Marcel Ropovik, Ivan Ruiz-Fernandez, Susana Baník, Gabriel Ulloa, José Luis Aczel, Balazs Szaszi, Barnabas PLoS One Research Article Voluntary isolation is one of the most effective methods for individuals to help prevent the transmission of diseases such as COVID-19. Understanding why people leave their homes when advised not to do so and identifying what contextual factors predict this non-compliant behavior is essential for policymakers and public health officials. To provide insight on these factors, we collected data from 42,169 individuals across 16 countries. Participants responded to items inquiring about their socio-cultural environment, such as the adherence of fellow citizens, as well as their mental states, such as their level of loneliness and boredom. We trained random forest models to predict whether someone had left their home during a one week period during which they were asked to voluntarily isolate themselves. The analyses indicated that overall, an increase in the feeling of being caged leads to an increased probability of leaving home. In addition, an increased feeling of responsibility and an increased fear of getting infected decreased the probability of leaving home. The models predicted compliance behavior with between 54% and 91% accuracy within each country’s sample. In addition, we modeled factors leading to risky behavior in the pandemic context. We observed an increased probability of visiting risky places as both the anticipated number of people and the importance of the activity increased. Conversely, the probability of visiting risky places increased as the perceived putative effectiveness of social distancing decreased. The variance explained in our models predicting risk ranged from < .01 to .54 by country. Together, our findings can inform behavioral interventions to increase adherence to lockdown recommendations in pandemic conditions. Public Library of Science 2022-11-28 /pmc/articles/PMC9704675/ /pubmed/36441720 http://dx.doi.org/10.1371/journal.pone.0276970 Text en © 2022 Hajdu et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Hajdu, Nandor
Schmidt, Kathleen
Acs, Gergely
Röer, Jan P.
Mirisola, Alberto
Giammusso, Isabella
Arriaga, Patrícia
Ribeiro, Rafael
Dubrov, Dmitrii
Grigoryev, Dmitry
Arinze, Nwadiogo C.
Voracek, Martin
Stieger, Stefan
Adamkovic, Matus
Elsherif, Mahmoud
Kern, Bettina M. J.
Barzykowski, Krystian
Ilczuk, Ewa
Martončik, Marcel
Ropovik, Ivan
Ruiz-Fernandez, Susana
Baník, Gabriel
Ulloa, José Luis
Aczel, Balazs
Szaszi, Barnabas
Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries
title Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries
title_full Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries
title_fullStr Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries
title_full_unstemmed Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries
title_short Contextual factors predicting compliance behavior during the COVID-19 pandemic: A machine learning analysis on survey data from 16 countries
title_sort contextual factors predicting compliance behavior during the covid-19 pandemic: a machine learning analysis on survey data from 16 countries
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9704675/
https://www.ncbi.nlm.nih.gov/pubmed/36441720
http://dx.doi.org/10.1371/journal.pone.0276970
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