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Prediction of the Effects of Epidemic Spreading with Graph Neural Networks

机译:与图形神经网络的流行病蔓延的影响预测

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Understanding how information propagates in real-life complex networks yields a better understanding of dynamical processes such as misinformation or epidemic spreading. With the recent resurgence of graph neural networks as a powerful predictive methodology, many network properties can be studied in terms of their predictability and as such offer a novel view on the studied process, with the direct application of fast predictions that are complementary to resource-intensive simulations. We investigated whether graph neural networks can be used to predict the effect of an epidemic, should it start from a given individual (patient zero). We reformulate this problem as node regression and demonstrate the high utility of network-based machine learning for a better understanding of the spreading effects. By being able to predict the effect of a given individual being the patient zero, the proposed approach offers potentially orders of magnitude faster risk assessment and potentially aids the adopted epidemic spreading analysis techniques.
机译:了解信息如何传播在现实生活中的复杂网络中的传播产生了更好地理解动态过程,例如错误信息或疫情传播。随着近期图形神经网络的复苏作为强大的预测方法,可以在其可预测性方面进行许多网络属性,并且如此在研究过程中提供了一种新颖的视图,直接应用了资源互补的快速预测 - 密集型模拟。我们调查了图形神经网络是否可用于预测流行病的效果,如果它从给定的单独开始(患者零)。我们将此问题重构为节点回归,并展示基于网络的机器学习的高效用,以便更好地理解传播效果。通过能够预测给定的个人作为患者零的效果,所提出的方法提供了更快的风险评估的潜在数量级,并且可能有助于采用采用的流行病分析技术。

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