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1.
researchsquare; 2024.
Preprint in English | PREPRINT-RESEARCHSQUARE | ID: ppzbmed-10.21203.rs.3.rs-4189570.v1

ABSTRACT

Regional Psychologically Valid Agents (R-PVAs) are computational models representing cognition and behavior of regional populations. R-PVAs are developed using ACT-R—a computational implementation of the Common Model of Cognition. We developed R-PVAs to model mask-wearing behavior in the U.S. over the pre-vaccination phase of COVID-19 using regionally organized demographic, psychographic, epidemiological, information diet, and behavioral data. An R-PVA using a set of five regional predictors selected by stepwise regression, a psychological self-efficacy process, and context-awareness of the effective transmission number, Rt, yields good fits to the observed proportion of the population wearing masks in 50 U.S. states [R2 = 0.92].  An R-PVA based on regional Big 5 personality traits yields strong fits [R2 = 0.83].  R-PVAs can be probed with combinations of population traits and time-varying context to predict behavior. R-PVAs are a novel technique to understand dynamical, nonlinear relations amongst context, traits, states, and behavior based on cognitive modeling.


Subject(s)
COVID-19
2.
arxiv; 2023.
Preprint in English | PREPRINT-ARXIV | ID: ppzbmed-2312.03301v1

ABSTRACT

The COVID-19 pandemic highlighted the critical role of human behavior in influencing infectious disease transmission and the need for models capturing this complex dynamic. We present an agent-based model integrating an epidemiological simulation of disease spread with a cognitive architecture driving individual mask-wearing decisions. Agents decide whether to mask based on a utility function weighting factors like peer conformity, personal risk tolerance, and mask-wearing discomfort. By conducting experiments systematically varying behavioral model parameters and social network structures, we demonstrate how adaptive decision-making interacts with network connectivity patterns to impact population-level infection outcomes. The model provides a flexible computational framework for gaining insights into how behavioral interventions like mask mandates may differentially influence disease spread across communities with diverse social structures. Findings highlight the importance of integrating realistic human decision processes in epidemiological models to inform policy decisions during public health crises.


Subject(s)
COVID-19 , Masked Hypertension , Communicable Diseases
3.
psyarxiv; 2022.
Preprint in English | PREPRINT-PSYARXIV | ID: ppzbmed-10.31234.osf.io.pk3xj

ABSTRACT

There is little significant work at the intersection of mathematical and computational epidemiology and detailed psychological processes, representations and mechanisms. This is true despite general agreement in the scientific community and the general public that human behavior–in its seemingly infinite variation and heterogeneity, susceptibility to bias, context and habit–is an integral if not fundamental component of what drives the dynamics of infectious disease. The COVID-19 pandemic serves as a close and poignant reminder. We offer a ten-year prospectus of kinds that centers around an unprecedented scientific approach: the integration of detailed psychological models into rigorous mathematical and computational epidemiological frameworks in a way that pushes the boundaries of both psychological science and population models of behavior.


Subject(s)
COVID-19 , Sexual Dysfunctions, Psychological , Rigor Mortis , Communicable Diseases
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