Vaccinations against viruses have always been the need of the hour since long past. However, it is hard to efficiently distribute the vaccines (on time) to all the corners of a country, especially during a pandemic. Considering the vastness of the population, diversified communities, and demands of a smart society, it is an important task to optimize the vaccine distribution strategy in any country/state effectively. Although there is a profusion of data (Big Data) from various vaccine administration sites that can be mined to gain valuable insights about mass vaccination drives, very few attempts has been made towards revolutionizing the traditional mass vaccination campaigns to mitigate the socio-economic crises of pandemic afflicted countries. In this paper, we bridge this gap in studies and experimentation. We collect daily vaccination data which is publicly available and carefully analyze it to generate meaning-full insights and predictions. We put forward a novel framework leveraging Supervised Learning and Reinforcement Learning (RL) which we call VacciNet, that is capable of learning to predict the demand of vaccination in a state of a country as well as suggest optimal vaccine allocation in the state for minimum cost of procurement and supply. At the present, our framework is trained and tested with vaccination data of the USA.
翻译:预防病毒疫苗的接种一直是过去很久以来最需要的。然而,很难(在时间上)有效地将疫苗(及时)分发到一个国家的每个角落,特别是在大流行病期间。考虑到人口众多、社区多样化和智能社会的需求,在任何国家/国家有效优化疫苗分发战略是一项重要任务。尽管可以从各种疫苗管理站收集大量数据(大数据),以获得关于大规模接种运动的宝贵见解,但很少人试图对传统的大规模接种运动进行革命,以减轻传染病流行国家的社会经济危机。在本文件中,我们弥合研究和试验方面的这一差距。我们每天收集可公开获得的疫苗数据,并仔细分析这些数据,以产生充分的意义和预测。我们提出了一个新的框架,利用我们称为“VacciNet”的超级学习和强化学习(RL)来预测一个国家的疫苗接种需求,以及建议在最低采购和供应费用方面最佳的疫苗分配。目前,我们的框架经过培训和测试,并用美国疫苗免疫数据进行测试。