Epidemiologists aiming to model the dynamics of global events face a significant challenge in identifying the factors linked with anomalies such as disease outbreaks. In this paper, we present a novel method for identifying the most important development sectors sensitive to disease outbreaks by using global development indicators as markers. We use statistical methods to assess the causative linkages between these indicators and disease outbreaks, as well as to find the most often ranked indicators. We used data imputation techniques in addition to statistical analysis to convert raw real-world data sets into meaningful data for causal inference. The application of various algorithms for the detection of causal linkages between the indicators is the subject of this research. Despite the fact that disparities in governmental policies between countries account for differences in causal linkages, several indicators emerge as important determinants sensitive to disease outbreaks over the world in the 21st Century.
翻译:旨在模拟全球事件动态的流行病学家在确定与疾病爆发等异常现象有关的因素方面面临重大挑战。在本论文中,我们提出了一种新颖的方法,通过使用全球发展指标作为标志,确定对疾病爆发敏感的最重要的发展部门。我们使用统计方法评估这些指标与疾病爆发之间的因果关系,并找到最经常排位的指标。我们除了利用统计分析外,还利用数据估算技术将原始真实世界数据集转换成有意义的因果推断数据。运用各种算法发现指标之间的因果联系是本研究的主题。尽管国家之间政府政策的差异是因果联系差异的原因,但若干指标是21世纪世界疾病爆发的重要决定因素。