epeprep:通过网络流行动力学学习节点表示

B. Shi, Jianan Zhong, Qing Bao, Hongjun Qiu, Jiming Liu
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引用次数: 7

摘要

了解疫情在复杂社会网络中的传播动态特性,对制定有效、高效的疫情防控公共卫生政策至关重要。近年来,网络嵌入的概念引起了人们的广泛关注,用于处理各种网络分析任务,其目的是将网络元素的关系或信息编码到低维向量空间中。然而,大多数现有的嵌入方法主要集中在保留静态网络信息,如结构接近度、节点/边缘属性和标签。相反,本文关注的是保持疫情在社交网络上传播动态特征的嵌入问题。我们提出了一种新的嵌入方法,即EpiRep,通过最大化由于网络上的每个单个节点开始的流行病而保留感染节点组的可能性来学习网络的节点表示。具体而言,采用易感传染模型模拟网络上的流行动态,采用负采样的连续词袋模型获得节点表示。实验结果表明,epeprep方法在多个合成网络和真实网络的节点聚类和分类方面优于两种基于随机行走的基准嵌入方法。本文提出的方法和研究结果可能为面对社交网络上疫情传播的源头识别和感染预防提供新的见解。•计算机系统组织→嵌入式系统;冗余;机器人技术;•网络→网络可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EpiRep: Learning Node Representations through Epidemic Dynamics on Networks
Understanding the dynamic properties of epidemic spreading on complex social networks is essential to make effective and efficient public health policies for epidemic prevention and control. In recent years, the concept of network embedding has attracted lots of attention to deal with various network analytic tasks, the purpose of which is to encode relationships or information of networked elements into a low-dimensional vector space. However, most existing embedding methods have focused mainly on preserving static network information, such as structural proximity, node/edge attributes, and labels. On the contrary, in this paper, we focus on the embedding problem of preserving dynamic characteristics of epidemic spreading on social networks. We propose a novel embedding method, namely EpiRep, to learn node representations of a network by maximizing the likelihood of preserving groups of infected nodes due to the epidemics starting from every single node on the network. Specifically, the Susceptible-Infectious model is adopted to simulate the epidemic dynamics on networks, and the Continuous Bag-of-Words model with negative sampling is used to obtain node representations. Experimental results show that the EpiRep method outperforms two benchmark random-walk based embedding methods in terms of node clustering and classification on several synthetic and real-world networks. The proposed method and findings in this paper may offer new insight for source identification and infection prevention in the face of epidemic spreading on social networks.CCS CONCEPTS • Computer systems organization → Embedded systems; Redundancy; Robotics; • Networks → Network reliability.
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