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首页> 外文期刊>EPJ Data Science >Predicting partially observed processes on temporal networks by Dynamics-Aware Node Embeddings (DyANE)
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Predicting partially observed processes on temporal networks by Dynamics-Aware Node Embeddings (DyANE)

机译:通过动态感知节点嵌入(Dyeane)预测临时网络上的部分观察到的过程

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Low-dimensional vector representations of network nodes have proven successful to feed graph data to machine learning algorithms and to improve performance across diverse tasks. Most of the embedding techniques, however, have been developed with the goal of achieving dense, low-dimensional encoding of network structure and patterns. Here, we present a node embedding technique aimed at providing low-dimensional feature vectors that are informative of dynamical processes occurring over temporal networks – rather than of the network structure itself – with the goal of enabling prediction tasks related to the evolution and outcome of these processes. We achieve this by using a lossless modified supra-adjacency representation of temporal networks and building on standard embedding techniques for static graphs based on random walks. We show that the resulting embedding vectors are useful for prediction tasks related to paradigmatic dynamical processes, namely epidemic spreading over empirical temporal networks. In particular, we illustrate the performance of our approach for the prediction of nodes’ epidemic states in single instances of a spreading process. We show how framing this task as a supervised multi-label classification task on the embedding vectors allows us to estimate the temporal evolution of the entire system from a partial sampling of nodes at random times, with potential impact for nowcasting infectious disease dynamics.
机译:已经成功地证明了网络节点的低维矢量表示,以将图形数据馈送到机器学习算法,并提高各种任务的性能。然而,大多数嵌入技术都是通过实现网络结构和模式的致密,低维编码而开发的。在这里,我们提出了旨在提供的信息动态过程的发生在时间上网络低维特征向量的节点嵌入技术 - 而不是网络结构本身的 - 与启用相关的这些演变和结果预测任务的目标流程。我们通过使用时间网络的无损修改的Supra-邻接表示来实现这一目标,并基于随机散步的静态图标准嵌入技术。我们表明所得到的嵌入向量对于与地域动态过程相关的预测任务是有用的,即在经验时间网络上传播的疫情。特别地,我们说明了我们在传播过程的单一实例中预测节点的流行状态的方法的性能。我们展示了嵌入向量上的监督多标签分类任务的框架如何允许我们从随机时间从节点的部分采样估计整个系统的时间演变,具有对现在的感染性疾病动态的潜在影响。

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