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Risk perception and behavioral change during epidemics: Comparing models of individual and collective learning.

TLDR
Simulation experiments showed that individual intelligent judgement about risks and the selection of coping strategies by groups with majority votes were outperformed by leader-based groups and even individuals deciding alone, and social interactions appeared essential for both individual learning and group learning.
Abstract
Modern societies are exposed to a myriad of risks ranging from disease to natural hazards and technological disruptions. Exploring how the awareness of risk spreads and how it triggers a diffusion of coping strategies is prominent in the research agenda of various domains. It requires a deep understanding of how individuals perceive risks and communicate about the effectiveness of protective measures, highlighting learning and social interaction as the core mechanisms driving such processes. Methodological approaches that range from purely physics-based diffusion models to data-driven environmental methods rely on agent-based modeling to accommodate context-dependent learning and social interactions in a diffusion process. Mixing agent-based modeling with data-driven machine learning has become popularity. However, little attention has been paid to the role of intelligent learning in risk appraisal and protective decisions, whether used in an individual or a collective process. The differences between collective learning and individual learning have not been sufficiently explored in diffusion modeling in general and in agent-based models of socio-environmental systems in particular. To address this research gap, we explored the implications of intelligent learning on the gradient from individual to collective learning, using an agent-based model enhanced by machine learning. Our simulation experiments showed that individual intelligent judgement about risks and the selection of coping strategies by groups with majority votes were outperformed by leader-based groups and even individuals deciding alone. Social interactions appeared essential for both individual learning and group learning. The choice of how to represent social learning in an agent-based model could be driven by existing cultural and social norms prevalent in a modeled society.

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Journal ArticleDOI

Impact of COVID-19 pandemic on mobility in ten countries and associated perceived risk for all transport modes.

TL;DR: In this article, the authors examined individual mobility patterns for all transport modes (walk, bicycle, motorcycle, car driven alone and car driven in company, bus, subway, tram, train, airplane) before and during the restrictions adopted in ten countries on six continents: Australia, Brazil, China, Ghana, India, Iran, Italy, Norway, South Africa and United States.
Journal ArticleDOI

Risk attitudes and human mobility during the COVID-19 pandemic.

TL;DR: In this paper, the authors explore human mobility patterns as a measure of behavioral responses during the COVID-19 pandemic and find that risk-taking attitudes are a critical factor in predicting reductions in human mobility and social confinement around the globe.
Journal ArticleDOI

Risk Attitudes and Human Mobility during the COVID-19 Pandemic

TL;DR: The results indicate that risk-taking attitudes are a critical factor in predicting reductions in human mobility and social confinement around the globe and suggest that regions with risk-averse attitudes are more likely to adjust their behavioural activity in response to the declaration of a pandemic even before official government lockdowns.
Journal ArticleDOI

Neural network based country wise risk prediction of COVID-19

TL;DR: A shallow Long short-term memory (LSTM) based neural network is proposed to predict the risk category of a country and shows that the proposed pipeline outperforms against state-of-the-art methods for 170 countries data and can be a useful tool for such risk categorization.
Journal ArticleDOI

Towards a data-driven characterization of behavioral changes induced by the seasonal flu.

TL;DR: In this article, the authors aim to determine the main factors driving self-initiated behavioral changes during the seasonal flu by collecting data from 599 surveys completed by 434 users.
References
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Book

Artificial Intelligence: A Modern Approach

TL;DR: In this article, the authors present a comprehensive introduction to the theory and practice of artificial intelligence for modern applications, including game playing, planning and acting, and reinforcement learning with neural networks.
Journal ArticleDOI

Dynamical Interplay between Awareness and Epidemic Spreading in Multiplex Networks

TL;DR: The analysis of the interrelation between two processes accounting for the spreading of an epidemic, and the information awareness to prevent its infection, on top of multiplex networks reveals the phase diagram of the incidence of the epidemics and allows the evolution of the epidemic threshold depending on the topological structure of the multiplex and the inter correlation with the awareness process.
Journal ArticleDOI

Modeling human decisions in coupled human and natural systems: Review of agent-based models

TL;DR: This paper concludes by advocating development of more process-based decision models as well as protocols or architectures that facilitate better modeling of human decisions in various CHANS.
Journal ArticleDOI

The global burden of cholera

TL;DR: The global burden of cholera, as determined through a systematic review with clearly stated assumptions, is high and provides a contemporary basis for planning public health interventions to control the disease.
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