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Twitter Catches The Flu: Detecting Influenza Epidemics using Twitter

机译:Twitter捕获流感:使用Twitter检测流感流行病

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With the recent rise in popularity and scale of social media, a growing need exists for systems that can extract useful information from huge amounts of data. We address the issue of detecting influenza epidemics. First, the proposed system extracts influenza related tweets using Twitter API. Then, only tweets that mention actual influenza patients are extracted by the support vector machine (SVM) based classifier. The experiment results demonstrate the feasibility of the proposed approach (0.89 correlation to the gold standard). Especially at the outbreak and early spread (early epidemic stage), the proposed method shows high correlation (0.97 correlation), which outperforms the state-of-the-art methods. This paper describes that Twitter texts reflect the real world, and that NLP techniques can be applied to extract only tweets that contain useful information.
机译:随着最近的普及和社交媒体的规模,可以对可以从大量数据中提取有用信息的系统而不断增长。我们解决了检测流感流行病的问题。首先,提出的系统利用Twitter API提取流感相关的推文。然后,仅通过基于支持向量机(SVM)的分类器提取提取实际流感患者的推文。实验结果表明了所提出的方法的可行性(与金标准的0.89相关)。特别是在爆发和早期传播(早期疫情阶段),所提出的方法显示出高相关(0.97个相关),这优于最先进的方法。本文介绍了Twitter文本反映了现实世界,并且可以应用NLP技术仅提取包含有用信息的推文。

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