A Big Data-Driven Intelligent Knowledge Discovery Method for Epidemic Spreading Paths

Yibo Zhang, Jie Zhang
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Abstract

The prevention and control of communicable diseases such as COVID-19 has been a worldwide problem, especially in terms of mining towards latent spreading paths. Although some communication models have been proposed from the perspective of spreading mechanism, it remains hard to describe spreading mechanism anytime. Because real-world communication scenarios of disease spreading are always dynamic, which cannot be described by time-invariant model parameters, to remedy such gap, this paper explores the utilization of big data analysis into this area, so as to replace mechanism-driven methods with big data-driven methods. In modern society with high digital level, the increasingly growing amount of data in various fields also provide much convenience for this purpose. Therefore, this paper proposes an intelligent knowledge discovery method for critical spreading paths based on epidemic big data. For the major roadmap, a directional acyclic graph of epidemic spread was constructed with each province and city in mainland China as nodes, all features of the same node are dimension-reduced, and a composite score is evaluated for each city per day by processing the features after principal component analysis. Then, the typical machine learning model named XGBoost carries out processing of feature importance ranking to discriminate latent candidate spreading paths. Finally, the shortest path algorithm is used as the basis to find the critical path of epidemic spreading between two nodes. Besides, some simulative experiments are implemented with use of realistic social network data. [ FROM AUTHOR]
大数据驱动的流行病传播路径智能知识发现方法
COVID-19等传染病的预防和控制一直是一个全球性问题,特别是在挖掘潜在传播途径方面。虽然从传播机制的角度提出了一些通信模型,但任何时候都很难描述传播机制。由于现实世界疾病传播的传播场景总是动态的,无法用定常模型参数来描述,为了弥补这一空白,本文探索将大数据分析应用于这一领域,用大数据驱动的方法取代机制驱动的方法。在数字化程度较高的现代社会,各个领域日益增长的数据量也为这一目的提供了很多便利。为此,本文提出了一种基于疫情大数据的关键传播路径智能知识发现方法。对于主路线图,以中国大陆各省市为节点,构建疫情传播的定向无环图,对同一节点的所有特征进行降维,并对特征进行主成分分析后,每天对每个城市进行综合评分。然后,对典型的机器学习模型XGBoost进行特征重要性排序处理,判别潜在候选传播路径。最后,以最短路径算法为基础,求出疫情在两个节点间传播的关键路径。此外,还利用真实的社交网络数据进行了一些模拟实验。[源自作者]
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