利用社交媒体内容监测感染性肠道疾病

Bin Zou, Vasileios Lampos, R. Gorton, I. Cox
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引用次数: 45

摘要

本文研究了感染性肠道疾病(IIDs)是否可以使用社交媒体内容进行检测和量化。实验是在微博服务Twitter的用户生成数据上进行的。评估的基础是与传统卫生监测方法报告的传染病病例数进行比较。我们采用深度学习方法创建主题词汇,然后应用正则化线性(Elastic Net)和非线性(高斯过程)回归函数进行推理。我们表明,像以前的文本回归任务一样,非线性方法执行得更好。总的来说,我们的实验结果,无论是在预测性能方面还是在语义解释方面,都表明Twitter数据包含一个足够强的信号,可以补充传统的IID监测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Infectious Intestinal Disease Surveillance using Social Media Content
This paper investigates whether infectious intestinal diseases (IIDs) can be detected and quantified using social media content. Experiments are conducted on user-generated data from the microblogging service, Twitter. Evaluation is based on the comparison with the number of IID cases reported by traditional health surveillance methods. We employ a deep learning approach for creating a topical vocabulary, and then apply a regularised linear (Elastic Net) as well as a nonlinear (Gaussian Process) regression function for inference. We show that like previous text regression tasks, the nonlinear approach performs better. In general, our experimental results, both in terms of predictive performance and semantic interpretation, indicate that Twitter data contain a signal that could be strong enough to complement conventional methods for IID surveillance.
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