在基于Covid-19代理的模型中使用机器学习推动社会学习

E. Augustijn, Rosa Aguilar Bolivar, S. Abdulkareem
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引用次数: 1

摘要

摘要疾病传播和政府干预影响Covid-19的传播。模型可以成为优化这些政府干预的重要工具。这就需要探索政府代理行为的多种实施方式。在基于代理的模型(ABMs)中,政府代理的行为可以是基于规则的或数据驱动的,代理可以是孤立的学习者(只使用自己的数据)或社会学习者。我们探索了一种数据驱动的社会方法的创建,其中行为基于机器学习(ML)算法,政府将来自其他欧洲国家的数据作为其决策的输入。政府的行动从认识风险开始,根据若干参数,例如疾病病例数、死亡人数和住院率。干预措施通过严密性指数进行衡量,衡量同时采取的干预措施(在家工作、戴口罩、关闭学校等)的数量。我们测试了四种机器学习算法(贝叶斯网络(BN), c4.5, Naïve贝叶斯(NB)和随机森林(RF)),使用5类和3类严格程度分类。这些算法是根据许多欧洲国家的疾病数据进行训练的。性能最好的算法是c4.5和RF。下一步是将这些算法实现到ABM中,并将结果与原始模型进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning to drive social learning in a Covid-19 Agent-Based Model
Abstract. Disease transmission and governmental interventions influence the spread of Covid-19. Models can be essential tools to optimise these governmental interventions. This requires the exploration of various ways to implement government agent behaviour. In Agent-Based Models (ABMs), government agent behaviour can be rule-based or data-driven, and the agent can be an isolated learner (using only its own data) or a social learner. We explore the creation of a data-driven social approach in which behaviour is based on a Machine Learning (ML) algorithm, and the government considers data from other European countries as input for their decision-making. Governmental actions start with risk perception, based on several parameters, e.g. the number of disease cases, deaths, and hospitalisation rate. The interventions are measured via the stringency index, measuring the simultaneous number of interventions (working from home, wearing a facemask, closing schools, etc.) taken. We test four machine learning algorithms (Bayesian Network (BN), c4.5, Naïve Bayes (NB) and Random Forest (RF)), using a 5-class and a 3-class classification of the stringency level. The algorithms are trained on disease data from many European countries. The best-performing algorithms were c4.5 and RF. The next step is to implement these algorithms into the ABM and evaluate the outcomes compared to the original model.
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