论文标题
分析COVID-19的状态:实时视觉数据分析,短期预测和风险因素识别
Analyzing the State of COVID-19: Real-time Visual Data Analysis, Short-Term Forecasting, and Risk Factor Identification
论文作者
论文摘要
最初在中国武汉报道了COVID-19-19020年1月30日被WHO宣布为国际关注的公共卫生紧急情况(PHEIC)。它现在已经扩散到180多个国家,它逐渐发展成为全球大流行,危害了全球公共卫生状况,并对全球社区构成了严重威胁。为了对抗和防止疾病的传播,所有个体应符合19009的迅速变化的状态。为了实现这一目标,我建立了一个网站来分析和提供最新的疾病状态和相关的分析见解。该网站旨在满足一般受众的需求,它旨在通过各种直接而简洁的数据可视化来传达洞察力,这些数据可视化,这些数据可视化,这些数据由合理的统计方法,准确的数据建模,最先进的自然语言处理技术和可靠的数据源来支持。本文讨论了用于生成网站上显示的见解的主要方法,其中包括自动数据摄入管道,归一化技术,移动平均计算,预测ARIMA时间序列和逻辑回归模型。此外,本文强调了使用方法论在Covid-19方面得出的关键发现。
The COVID-19 outbreak was initially reported in Wuhan, China, and it has been declared as a Public Health Emergency of International Concern (PHEIC) on 30 January 2020 by WHO. It has now spread to over 180 countries, and it has gradually evolved into a worldwide pandemic, endangering the state of global public health and becoming a serious threat to the global community. To combat and prevent the spread of the disease, all individuals should be well-informed of the rapidly changing state of COVID-19. To accomplish this objective, I have built a website to analyze and deliver the latest state of the disease and relevant analytical insights. The website is designed to cater to the general audience, and it aims to communicate insights through various straightforward and concise data visualizations that are supported by sound statistical methods, accurate data modeling, state-of-the-art natural language processing techniques, and reliable data sources. This paper discusses the major methodologies which are utilized to generate the insights displayed on the website, which include an automatic data ingestion pipeline, normalization techniques, moving average computation, ARIMA time-series forecasting, and logistic regression models. In addition, the paper highlights key discoveries that have been derived in regard to COVID-19 using the methodologies.