论文标题

对人口危险因素调整的COVID-19死亡的转换不变功能聚类

Translation-invariant functional clustering on COVID-19 deaths adjusted on population risk factors

论文作者

Cheam, Amay SM, Fredette, Marc, Marbac, Matthieu, Navarro, Fabien

论文摘要

Covid-19的大流行以其高感染率席卷了世界。调查其地理差异具有至关重要的兴趣,以评估其与政治决策,经济指标或心理健康的关系。本文着重于在八个月内聚集在欧洲和美国的几个地区报告的每日死亡率。已经开发了几种方法来聚集此类功能数据。但是,这些方法不是翻译不变的,因此无法处理疾病到达的不同时间,也不能考虑外部协变量,因此无法调整每个地区的人口风险因素。我们提出了一种新颖的三步聚类方法来规避这些问题。作为第一步,特征提取是通过翻译不变的小波分解来执行的,该分解允许处理不同的onset。作为第二步,单指数回归用于中和由人口危险因素引起的差异。作为第三步,在回归残差上安装了非参数混合物,以实现区域聚类。本文的补充材料,包括可用于复制工作的材料的标准化描述。

The COVID-19 pandemic has taken the world by storm with its high infection rate. Investigating its geographical disparities has paramount interest in order to gauge its relationships with political decisions, economic indicators, or mental health. This paper focuses on clustering the daily death rates reported in several regions of Europe and the United States over eight months. Several methods have been developed to cluster such functional data. However, these methods are not translation-invariant and thus cannot handle different times of arrivals of the disease, nor can they consider external covariates and so are unable to adjust for the population risk factors of each region. We propose a novel three-step clustering method to circumvent these issues. As a first step, feature extraction is performed by translation-invariant wavelet decomposition which permits to deal with the different onsets. As a second step, single-index regression is used to neutralize disparities caused by population risk factors. As a third step, a nonparametric mixture is fitted on the regression residuals to achieve the region clustering. Supplementary materials for this article, including a standardized description of the materials available for reproducing the work, are available online.

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