An Event-Centric Prediction System for COVID-19

Xiaoyi Fu, Xu Jiang, Yunfei Qi, Mengqi Xu, Yuhang Song, Jie Zhang, Xindong Wu
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引用次数: 7

Abstract

As COVID-19 evolved into a pandemic, a lot of effort has been made by scientific community to intervene in its spread. One of them was to predict the trend of the epidemic to provide a basis for the decision making of both the public and private sectors. In this paper, a system for predicting the spread of COVID-19 based on detecting and tracking events evolution in social media is proposed. The system includes a pipeline for building Event-Centric Knowledge Graphs from Twitter data streams about COVID-19, and uses the graph statistics to obtain a more accurate prediction based on the simulation of epidemic dynamic models. Experiments of 128 countries or regions conducted on the data set released by Johns Hopkins University on COVID-19 confirmed the effectiveness of the system. At the same time, the guidance our system provided to the plan of return-to-work for an enterprise has attracted the attention of and reported by top influential media.
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以事件为中心的COVID-19预测系统
随着COVID-19演变为大流行,科学界为干预其传播做出了大量努力。其中之一是预测该流行病的趋势,为公共和私营部门的决策提供依据。本文提出了一种基于检测和跟踪社交媒体事件演变的COVID-19传播预测系统。该系统包括一个从Twitter数据流中构建以事件为中心的知识图谱的管道,并利用图形统计数据在模拟疫情动态模型的基础上获得更准确的预测。在美国约翰霍普金斯大学公布的新冠肺炎疫情数据集上,对128个国家或地区进行的实验证实了该系统的有效性。同时,我们的制度为企业的返工计划提供的指导也受到了顶级有影响力媒体的关注和报道。
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