Modelling COVID-19 epidemic and its social consequences

O. Pugachova
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引用次数: 1

Abstract

The paper studies different approaches to modelling COVID-19 transmission. It is emphasized that the variety of models proposed for forecasting the dynamics of epidemic and its long-term socio-economic consequences deals with the complexity of the object under investigation. So the multiplicity of models makes it possible to describe different aspects of complex reality. It is also highlighted that agent-based simulation is more suitable for modelling social aspects of the processes (human behaviour, social interactions, collective behaviour, and opinion diffusion) in the situation of deep uncertainty.The computer experiments with the parameters of the model are analysed on the basis of a number of agent-based models in NetLogo, namely epiDEM and ASSOCC. It is demonstrated that the dynamics of COVID-19 has different scenarios, and agent-based modelling is a powerful tool in political decisionmaking, taking into account social complexity that often exhibits unpredictable output of intervention policy. The role of agent-based modelling in social learning is also discussed. It is pointed out that social learning can reduce the impact of unsubstantiated statements and rumors that are not always adequate to the situation. It is also stressed that social learning could influence social behaviour that, in turn, facilitates the development of social patterns that reduces the likelihood of disease spreading. Attention is paid to the idea that involving people into the modelling process is a part of effective anti-epidemic policy because of the sensitivity of the output of political intervention to the behavioural reaction. It has been shown that today the ideas of agent-based modelling are widely used by social scientists worldwide. The aim of this endeavour is not only to overcome the current pandemic and its long-term socioeconomic consequences but also to prepare for new challenges in the future. The paper is also aimed at paying attention to the lack of agent-based models in Ukraine that could help policy-makers in developing practical recommendations and avoiding undesirable scenarios.
模拟COVID-19流行病及其社会后果
本文研究了模拟COVID-19传播的不同方法。需要强调的是,为预测流行病的动态及其长期社会经济后果而提出的各种模型处理了所调查对象的复杂性。因此,模型的多样性使得描述复杂现实的不同方面成为可能。它还强调,基于主体的仿真更适合于在深度不确定性的情况下建模过程的社会方面(人类行为,社会互动,集体行为和意见扩散)。在NetLogo中基于agent的多个模型(即epdem和ASSOCC)的基础上,对模型参数进行了计算机实验分析。研究表明,COVID-19的动态具有不同的情景,基于主体的建模是政治决策的有力工具,考虑到社会复杂性,往往会出现不可预测的干预政策输出。本文还讨论了基于主体的建模在社会学习中的作用。有人指出,社会学习可以减少未经证实的陈述和谣言的影响,这些陈述和谣言并不总是适合于这种情况。还强调,社会学习可以影响社会行为,进而促进社会模式的发展,从而减少疾病传播的可能性。需要注意的是,由于政治干预的结果对行为反应的敏感性,使人们参与建模过程是有效的抗流行病政策的一部分。研究表明,今天基于主体的建模思想被世界各地的社会科学家广泛使用。这一努力的目的不仅是克服当前的大流行病及其长期社会经济后果,而且是为今后的新挑战做好准备。该文件还旨在关注乌克兰缺乏基于主体的模型,这些模型可以帮助决策者制定实用建议并避免不良情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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