首页> 外文会议>Annual conference on Neural Information Processing Systems >On Triangular versus Edge Representations - Towards Scalable Modeling of Networks
【24h】

On Triangular versus Edge Representations - Towards Scalable Modeling of Networks

机译:关于三角形与边缘表示-走向网络的可扩展建模

获取原文

摘要

In this paper, we argue for representing networks as a bag of triangular motifs, particularly for important network problems that current model-based approaches handle poorly due to computational bottlenecks incurred by using edge representations. Such approaches require both 1-edges and 0-edges (missing edges) to be provided as input, and as a consequence, approximate inference algorithms for these models usually require Ω(N~2) time per iteration, precluding their application to larger real-world networks. In contrast, triangular modeling requires less computation, while providing equivalent or better inference quality. A triangular motif is a vertex triple containing 2 or 3 edges, and the number of such motifs is Θ(∑_i D_i~2) (where D_i is the degree of vertex i), which is much smaller than N2 for low-maximum-degree networks. Using this representation, we develop a novel mixed-membership network model and approximate inference algorithm suitable for large networks with low max-degree. For networks with high maximum degree, the triangular motifs can be naturally subsampled in a node-centric fashion, allowing for much faster inference at a small cost in accuracy. Empirically, we demonstrate that our approach, when compared to that of an edge-based model, has faster runtime and improved accuracy for mixed-membership community detection. We conclude with a large-scale demonstration on an N ≈ 280,000-node network, which is infeasible for network models with Ω(N~2) inference cost.
机译:在本文中,我们主张将网络表示为一堆三角形图案,特别是对于重要的网络问题,由于使用边缘表示而导致的计算瓶颈,当前基于模型的方法无法很好地处理这些问题。这种方法需要同时提供1边和0边(缺失边)作为输入,因此,这些模型的近似推理算法通常每次迭代需要Ω(N〜2)时间,从而排除了它们在较大实数上的应用。世界网络。相反,三角形建模需要较少的计算,同时提供同等或更好的推理质量。三角形图案是包含2个或3个边的顶点三元组,此类图案的数量为Θ(∑_i D_i〜2)(其中D_i是顶点i的度),对于低最大值-学位网络。使用这种表示,我们开发了一种适用于最大度数较低的大型网络的新型混合成员网络模型和近似推理算法。对于具有最高最大度的网络,可以以节点为中心的方式自然地对三角形图案进行二次采样,从而以较低的精度获得更快的推理速度。从经验上讲,我们证明了与基于边缘的模型相比,该方法具有更快的运行时间和更高的混合成员社区检测准确性。我们在N≈280,000个节点的网络上进行了大规模演示,这对于具有Ω(N〜2)推理成本的网络模型是不可行的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号