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Graph-Coupled HMMs for Modeling the Spread of Infection

机译:图耦合HMM用于模拟感染传播

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We develop Graph-Coupled Hidden Markov Models (GCHMMs) for modeling the spread of infectious disease locally within a social network. Unlike most previous research in epidemiology, which typically models the spread of infection at the level of entire populations, we successfully leverage mobile phone data collected from 84 people over an extended period of time to model the spread of infection on an individual level. Our model, the GCHMM, is an extension of widely-used Coupled Hidden Markov Models (CHMMs), which allow dependencies between state transitions across multiple Hidden Markov Models (HMMs), to situations in which those dependencies are captured through the structure of a graph, or to social networks that may change over time. The benefit of making infection predictions on an individual level is enormous, as it allows people to receive more personalized and relevant health advice.
机译:我们开发了图耦合隐马尔可夫模型(GCHMM),用于对社交网络中本地传染病的传播进行建模。与以往流行病学的大多数研究(通常在整个人群中模拟感染的传播)不同,我们成功地利用了从84个人在很长一段时间内收集到的手机数据,在个体水平上对感染的传播进行了建模。我们的模型GCHMM是广泛使用的耦合隐马尔可夫模型(CHMM)的扩展,该模型允许跨多个隐马尔可夫模型(HMM)的状态转换之间的依存关系,其中这些依赖关系是通过图的结构捕获的,或可能随时间变化的社交网络。在个人水平上做出感染预测的好处是巨大的,因为它使人们可以收到更多个性化和相关的健康建议。

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