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An evolutionary algorithm approach to link prediction in dynamic social networks

机译:动态社交网络中链接预测的进化算法方法

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摘要

Many real world, complex phenomena have underlying structures of evolving networks where nodes and links are added and removed over time. A central scientific challenge is the description and explanation of network dynamics, with a key test being the prediction of short and long term changes. For the problem of short-term link prediction, existing methods attempt to determine neighborhood metrics that correlate with the appearance of a link in the next observation period. Recent work has suggested that the incorporation of topological features and node attributes can improve link prediction. We provide an approach to predicting future links by applying the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) to optimize weights which are used in a linear combination of sixteen neighborhood and node similarity indices. We examine a large dynamic social network with over 10~6 nodes (Twitter reciprocal reply networks), both as a test of our general method and as a problem of scientific interest in itself. Our method exhibits fast convergence and high levels of precision for the top twenty predicted links. Based on our findings, we suggest possible factors which may be driving the evolution of Twitter reciprocal reply networks.
机译:许多现实世界中的复杂现象具有不断发展的网络的底层结构,其中随着时间的推移添加和删除节点和链接。一个主要的科学挑战是对网络动力学的描述和解释,关键测试是对短期和长期变化的预测。对于短期链路预测的问题,现有方法试图确定与下一观察周期中的链路的外观相关的邻域度量。最近的工作表明,合并拓扑特征和节点属性可以改善链接预测。我们提供了一种通过应用协方差矩阵适应进化策略(CMA-ES)来优化权重的方法来预测将来的链接,该权重用于16个邻域和节点相似性指数的线性组合中。我们检查了一个大型的动态社交网络,其中包含10到6个以上的节点(Twitter双向回复网络),既是对我们一般方法的检验,又是对自身科学兴趣的问题。对于前20个预测的链接,我们的方法显示出快速收敛和较高的精度。根据我们的发现,我们提出了可能推动Twitter双向回复网络发展的可能因素。

著录项

  • 来源
    《Journal of computational science》 |2014年第5期|750-764|共15页
  • 作者单位

    Computational Story Lab, Department of Mathematics and Statistics, Vermont Complex Systems Center & the Vermont Advanced Computing Core,University of Vermont, Burlington, VT 05405, United States;

    Computational Story Lab, Department of Mathematics and Statistics, Vermont Complex Systems Center & the Vermont Advanced Computing Core,University of Vermont, Burlington, VT 05405, United States;

    Computational Story Lab, Department of Mathematics and Statistics, Vermont Complex Systems Center & the Vermont Advanced Computing Core,University of Vermont, Burlington, VT 05405, United States;

    Computational Story Lab, Department of Mathematics and Statistics, Vermont Complex Systems Center & the Vermont Advanced Computing Core,University of Vermont, Burlington, VT 05405, United States;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Algorithms; Data mining; Link prediction; Social networks; Twitter; Complex networks; Complex systems;

    机译:算法;数据挖掘;链接预测;社交网络;推特;复杂的网络;复杂系统;

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