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Regional Level Influenza Study with Geo-Tagged Twitter Data

机译:带有地理标签的Twitter数据的区域级流感研究

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摘要

The rich data generated and read by millions of users on social media tells what is happening in the real world in a rapid and accurate fashion. In recent years many researchers have explored real-time streaming data from Twitter for a broad range of applications, including predicting stock markets and public health trend. In this paper we design, implement, and evaluate a prototype system to collect and analyze influenza statuses over different geographical locations with real-time tweet streams. We investigate the correlation between the Twitter flu counts and the official statistics from the Center for Disease Control and Prevention (CDC) and discover that real-time tweet streams capture the dynamics of influenza cases at both national and regional level and could potentially serve as an early warning system of influenza epidemics. Furthermore, we propose a dynamic mathematical model which can forecast Twitter flu counts with high accuracy.
机译:数百万用户在社交媒体上生成和读取的丰富数据以快速,准确的方式告诉现实世界中正在发生的事情。近年来,许多研究人员已经探索了Twitter的实时流数据,并将其用于广泛的应用程序,包括预测股市和公共健康趋势。在本文中,我们设计,实施和评估一个原型系统,以通过实时推文流收集和分析不同地理位置的流感状况。我们调查了Twitter流感计数与疾病控制与预防中心(CDC)官方统计数据之间的相关性,发现实时推文流捕获了国家和地区级流感病例的动态,并有可能充当流行性感冒预警系统。此外,我们提出了一种动态数学模型,该模型可以高精度预测Twitter流感计数。

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