Dynamic Information Mining Based Vaccine Distribution Strategy

Junjie Liang, Huilin Yao, Jiayi Wang, Ya-Hui Jia
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引用次数: 1

Abstract

Vaccination is essential for preventing epidemics likes COVID-19. Rational vaccine distribution can greatly improve vaccination efficiency and reduce costs. In this paper, to predict the number of future vaccinations, we utilize ARIMA model on the total number of new coronavirus vaccinations in China for a period. Based on the model, we propose a vaccine distribution method that is composed of two distribution strategies with different characteristics, namely “proximity based vaccine distribution” and “transfer based vaccine disritbution Specifically, we propose a hierarchical vaccination serving communities model to obtain the serving pressures, and construct a first order Marcov chain to explore the importance of different vaccination sites to decide the dynamic distribution with consideration of the rules based on some practical factors. Extensive experiments including two cities in China show that the proposed model can flexibly and effectively adapt to cities with different conditions.
基于动态信息挖掘的疫苗配送策略
疫苗接种对于预防COVID-19等流行病至关重要。合理的疫苗分配可以大大提高疫苗接种效率,降低成本。为了预测未来的疫苗接种数量,我们使用ARIMA模型对中国一段时间的新型冠状病毒疫苗接种总数进行预测。在此基础上,提出了一种由两种不同特征的配送策略组成的疫苗配送方法,即“基于邻近的疫苗配送”和“基于转移的疫苗配送”。构建一阶马尔可夫链,探讨不同接种点在考虑某些实际因素的规律下决定动态分布的重要性。包括中国两个城市在内的大量实验表明,该模型可以灵活有效地适应不同条件的城市。
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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