COVID-Forecast-Graph: An Open Knowledge Graph for Consolidating COVID-19 Forecasts and Economic Indicators via Place and Time

Rui Zhu, K. Janowicz, Gengchen Mai, Ling Cai, Meilin Shi
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引用次数: 3

Abstract

Abstract. The longer the COVID-19 pandemic lasts, the more apparent it becomes that understanding its social drivers may be as important as understanding the virus itself. One such social driver is misinformation and distrust in institutions. This is particularly interesting as the scientific process is more transparent than ever before. Numerous scientific teams have published datasets that cover almost any imaginable aspects of COVID-19 during the last two years. However, consistently and efficiently integrating and making sense of these separate data “silos” to scientists, decision makers, journalists, and more importantly the general public remain a key challenge with important implications for transparency. Several types of knowledge graphs have been published to tackle this issue and to enable data crosswalks by providing rich contextual information. Interestingly, none of these graphs has focused on COVID-19 forecasts despite them acting as the underpinning for decision making. In this work we motivate the need for exposing forecasts as a knowledge graph, showcase queries that run against the graph, and geographically interlink forecasts with indicators of economic impacts.
covid - prediction -Graph:基于地点和时间整合COVID-19预测和经济指标的开放知识图谱
摘要COVID-19大流行持续的时间越长,了解其社会驱动因素可能与了解病毒本身一样重要,这一点就越明显。其中一个社会驱动因素是对机构的错误信息和不信任。这是特别有趣的,因为科学过程比以往任何时候都更加透明。在过去两年中,许多科学团队发布了涵盖COVID-19几乎所有可想象的方面的数据集。然而,对科学家、决策者、记者、更重要的是公众来说,持续有效地整合和理解这些独立的数据“孤岛”仍然是对透明度具有重要影响的关键挑战。已经发布了几种类型的知识图来解决这个问题,并通过提供丰富的上下文信息来实现数据交叉。有趣的是,这些图表都没有关注COVID-19的预测,尽管它们是决策的基础。在这项工作中,我们激发了将预测显示为知识图的需求,展示了与图相匹配的查询,并将预测与经济影响指标在地理上相互关联。
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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