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Collective Intelligence for Preventing Pandemic Crises: A Model-Centralized Organizational Framework

IEEE Systems, Man, and Cybernetics Magazine(2024)

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摘要
Pandemic propagation, a highly nonlinear and complicated process, is difficult to understand, predict, and prevent in reality. The explosive growth of mass data and intelligent technologies poses new insights for solving this challenge. From a systematic perspective, this article proposes an organizational framework for pandemic crisis control. As a result, a model as a core component serves as a pandemic simulation and analog control. The collective data are sourced from realistic dynamics and feed the model after parameterization processing. Some advanced intelligent technologies are adopted to optimize simulation results and assist policymaking. To enhance the applicability of the framework, four typical routes and three levels of examples are provided. The routes contain diverse fields such as computer science, epidemiology, biomedicine, and social science. The examples are in relation to the few, regular, and rich levels of data information. Finally, this article paves the way for intelligent pandemic crises prevention and yields a fresh application paradigm in the field of collective intelligence (CI).
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关键词
Collective Learning,Organizational Framework,Social Sciences,Computer Science,Level Of Information,Intelligence Technology,Parallel Control,Typical Route,Pandemic Prevention,Explosive Growth Of Data,Social Media,Social Distancing,Public Administration,Medical Data,Methicillin-resistant Staphylococcus Aureus,Medical Resources,Mobile Data,Management Science,Use Of Framework,Information Disclosure,Basic Reproduction Number R0,Future Crises,Open Dataset,Number Of Infected Cases,Stages Of Crisis,Social Media Data,Optimal Network,Best Explanation,Individual Mobility,Cyber-physical Systems
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