SimNest: Social Media Nested Epidemic Simulation via Online Semi-supervised Deep Learning.

Liang Zhao, Jiangzhuo Chen, Feng Chen, Wei Wang, Chang-Tien Lu, Naren Ramakrishnan
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引用次数: 64

Abstract

Infectious disease epidemics such as influenza and Ebola pose a serious threat to global public health. It is crucial to characterize the disease and the evolution of the ongoing epidemic efficiently and accurately. Computational epidemiology can model the disease progress and underlying contact network, but suffers from the lack of real-time and fine-grained surveillance data. Social media, on the other hand, provides timely and detailed disease surveillance, but is insensible to the underlying contact network and disease model. This paper proposes a novel semi-supervised deep learning framework that integrates the strengths of computational epidemiology and social media mining techniques. Specifically, this framework learns the social media users' health states and intervention actions in real time, which are regularized by the underlying disease model and contact network. Conversely, the learned knowledge from social media can be fed into computational epidemic model to improve the efficiency and accuracy of disease diffusion modeling. We propose an online optimization algorithm to substantialize the above interactive learning process iteratively to achieve a consistent stage of the integration. The extensive experimental results demonstrated that our approach can effectively characterize the spatio-temporal disease diffusion, outperforming competing methods by a substantial margin on multiple metrics.

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SimNest:通过在线半监督深度学习的社交媒体嵌套流行病模拟。
流感和埃博拉等传染病流行对全球公共卫生构成严重威胁。至关重要的是要有效和准确地描述疾病特征和正在发生的流行病的演变。计算流行病学可以模拟疾病进展和潜在的接触网络,但缺乏实时和细粒度的监测数据。另一方面,社交媒体提供了及时和详细的疾病监测,但对潜在的接触网络和疾病模型不敏感。本文提出了一种新的半监督深度学习框架,该框架集成了计算流行病学和社交媒体挖掘技术的优势。具体而言,该框架实时学习社交媒体用户的健康状态和干预行为,并通过潜在疾病模型和联系网络进行正则化。反过来,可以将从社交媒体中学习到的知识输入到计算流行病模型中,提高疾病扩散建模的效率和准确性。我们提出了一种在线优化算法来迭代实体化上述交互学习过程,以实现集成的一致阶段。大量的实验结果表明,我们的方法可以有效地表征疾病的时空扩散,在多个指标上明显优于竞争对手的方法。
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