论文标题

通过随机基质模拟传染病的传播

To Simulate the Spread of Infectious Diseases by the Random Matrix

论文作者

Wang, Ting, Li, Gui-Yun, Li, Xin-Hui, Zhou, Chi-Chun, Wang, Yuan-Yuan, Li, Li-Juan, Yang, Yan-Ting

论文摘要

建立能够模拟传染病传播的模型的主要目的是控制它们。沿着这种方式,找到最佳疾病控制策略的关键是在不同情况下获得大量疾病过渡的模拟。因此,首选可以模拟疾病在情况下模拟疾病传播并具有高效效率的模型。在现实的社交网络中,随机接触,包括公共场所和公共交通的人之间的联系,成为传播传染病的重要通道。在本文中,建议在随机接触下有效模拟传染病的扩散。在这种方法中,人之间的随机接触的特征是随机生成的元素随机矩阵,疾病的传播由马尔可夫过程模拟。我们报告了所提出的模型的有趣特性:诸如死亡率之类的疾病扩散的主要指标是人口规模的不变。因此,可以对少量人群组成的模型进行代表性模拟。该模型的主要优点是,它可以轻松模拟在更现实的场景下疾病的传播,因此能够给出搜索最佳控制策略所需的大量模拟。基于这项工作,将引入强化学习,以在以下工作中提供最佳的控制策略。

The main aim to build models capable of simulating the spreading of infectious diseases is to control them. And along this way, the key to find the optimal strategy for disease control is to obtain a large number of simulations of disease transitions under different scenarios. Therefore, the models that can simulate the spreading of diseases under scenarios closer to the reality and are with high efficiency are preferred. In the realistic social networks, the random contact, including contacts between people in the public places and the public transits, becomes the important access for the spreading of infectious diseases. In this paper, a model can efficiently simulate the spreading of infectious diseases under random contacts is proposed. In this approach, the random contact between people is characterized by the random matrix with elements randomly generated and the spread of the diseases is simulated by the Markov process. We report an interesting property of the proposed model: the main indicators of the spreading of the diseases such as the death rate are invariant of the size of the population. Therefore, representative simulations can be conducted on models consist of small number of populations. The main advantage of this model is that it can easily simulate the spreading of diseases under more realistic scenarios and thus is able to give a large number of simulations needed for the searching of the optimal control strategy. Based on this work, the reinforcement learning will be introduced to give the optimal control strategy in the following work.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源