A Visual Data Science Solution for Visualization and Visual Analytics of Big Sequential Data

C. Leung, Yan Wen, Chenru Zhao, Haolin Zheng, Fan Jiang, A. Cuzzocrea
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引用次数: 4

Abstract

In the current era of big data, huge volumes of valuable data have been generated and collected at a rapid velocity from a wide variety of rich data sources. In recent years, the initiates of open data also led to the willingness of many government, researchers, and organizations to share their data and make them publicly accessible. An example of open big data is healthcare, disease and epidemiological data such as privacy-preserving statistics on patients who suffered from epidemic diseases like the coronavirus disease 2019 (COVID-19). Analyzing these open big data can be for social good. For instance, analyzing and mining the disease statistics helps people to get a better understanding of the disease, which may inspire them to take part in preventing, detecting, controlling and combating the disease. As “a picture is worth a thousand words”, having the pictorial representation further enhances people’s understanding of the data and the corresponding results for the analysis and mining. Hence, in this paper, we present a visual data science solution for the visualization and visual analytics of big sequential data. We illustrate the ideas through the visualization and visual analytics of sequences of real-life COVID-19 epidemiological data. Our solution enables people to visualize COVID-19 epidemiological data and their temporal trends. It also allows people to visually analyze the data and discover relationships among popular features associated with the COVID-19 cases. Evaluation of these real-life sequential COVID-19 epidemiological data demonstrates the effectiveness of our visual data science solution in enhancing user experience in the visualization and visual analytics of big sequential data.
面向大序列数据可视化和可视化分析的可视化数据科学解决方案
在当前的大数据时代,从种类繁多、内容丰富的数据源中,快速生成并收集了大量有价值的数据。近年来,开放数据的发起也导致许多政府、研究人员和组织愿意分享他们的数据,并使他们可以公开访问。开放大数据的一个例子是医疗保健、疾病和流行病学数据,例如2019冠状病毒病(COVID-19)等流行病患者的隐私保护统计数据。分析这些开放的大数据可以造福社会。例如,分析和挖掘疾病统计数据可以帮助人们更好地了解疾病,这可能会激励他们参与预防、检测、控制和对抗疾病。“一图胜千言”,有了图形化的表示,进一步增强了人们对数据的理解和对分析挖掘结果的理解。因此,在本文中,我们提出了一个可视化数据科学解决方案,用于大序列数据的可视化和可视化分析。我们通过对现实生活中的COVID-19流行病学数据序列的可视化和可视化分析来说明这些想法。我们的解决方案使人们能够可视化COVID-19流行病学数据及其时间趋势。它还允许人们直观地分析数据,并发现与COVID-19病例相关的流行特征之间的关系。对这些现实生活中连续的COVID-19流行病学数据的评估表明,我们的视觉数据科学解决方案在增强大序列数据可视化和可视化分析中的用户体验方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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