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Applying GIS and Machine Learning Methods to Twitter Data for Multiscale Surveillance of Influenza

机译:将GIS和机器学习方法应用于Twitter数据以进行多尺度流感监测

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摘要

Traditional methods for monitoring influenza are haphazard and lack fine-grained details regarding the spatial and temporal dynamics of outbreaks. Twitter gives researchers and public health officials an opportunity to examine the spread of influenza in real-time and at multiple geographical scales. In this paper, we introduce an improved framework for monitoring influenza outbreaks using the social media platform Twitter. Relying upon techniques from geographic information science (GIS) and data mining, Twitter messages were collected, filtered, and analyzed for the thirty most populated cities in the United States during the 2013–2014 flu season. The results of this procedure are compared with national, regional, and local flu outbreak reports, revealing a statistically significant correlation between the two data sources. The main contribution of this paper is to introduce a comprehensive data mining process that enhances previous attempts to accurately identify tweets related to influenza. Additionally, geographical information systems allow us to target, filter, and normalize Twitter messages.
机译:传统的流行性感冒监测方法是偶然的,并且缺乏有关爆发时空动态的详细信息。 Twitter使研究人员和公共卫生官员有机会实时,并在多个地理范围内检查流感的传播情况。在本文中,我们介绍了一种使用社交媒体平台Twitter监视流感爆发的改进框架。依靠地理信息科学(GIS)和数据挖掘的技术,在2013-2014年流感季节期间,收集,过滤和分析了Twitter,以分析美国人口最多的三十个城市。将该程序的结果与国家,地区和地方流感爆发报告进行了比较,揭示了两个数据源之间的统计显着相关性。本文的主要贡献是引入了一个全面的数据挖掘过程,该过程增强了以前的尝试以准确识别与流感有关的推文。此外,地理信息系统使我们能够定位,过滤和规范Twitter消息。

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