首页> 美国卫生研究院文献>Journal of the American Medical Informatics Association : JAMIA >Network context matters: graph convolutional network model over social networks improves the detection of unknown HIV infections among young men who have sex with men
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Network context matters: graph convolutional network model over social networks improves the detection of unknown HIV infections among young men who have sex with men

机译:网络上下文很重要:社交网络上的图形卷积网络模型可改善与男性发生性关系的年轻男性中未知的HIV感染的检测

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摘要

HIV infection risk can be estimated based on not only individual features but also social network information. However, there have been insufficient studies using n machine learning methods that can maximize the utility of such information. Leveraging a state-of-the-art network topology modeling method, graph convolutional networks (GCN), our main objective was to include network information for the task of detecting previously unknown HIV infections.
机译:不仅可以根据个人特征,而且可以根据社交网络信息来估计HIV感染风险。然而,使用n种机器学习方法的研究不足以使此类信息的效用最大化。利用最先进的网络拓扑建模方法,即图卷积网络(GCN),我们的主要目标是包括网络信息,以检测先前未知的HIV感染。

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