首页> 外文会议>Conference on Neural Information Processing Systems >A Unifying Framework for Spectrum-Preserving Graph Sparsification and Coarsening
【24h】

A Unifying Framework for Spectrum-Preserving Graph Sparsification and Coarsening

机译:一种统一的频谱保存曲线图稀疏和粗化框架

获取原文

摘要

How might one "reduce" a graph? That is, generate a smaller graph that preserves the global structure at the expense of discarding local details? There has been extensive work on both graph sparsification (removing edges) and graph coarsening (merging nodes, often by edge contraction); however, these operations are currently treated separately. Interestingly, for a planar graph, edge deletion corresponds to edge contraction in its planar dual (and more generally, for a graphical matroid and its dual). Moreover, with respect to the dynamics induced by the graph Laplacian (e.g., diffusion), deletion and contraction are physical manifestations of two reciprocal limits: edge weights of 0 and ∞, respectively. In this work, we provide a unifying framework that captures both of these operations, allowing one to simultaneously sparsify and coarsen a graph while preserving its large-scale structure. The limit of infinite edge weight is rarely considered, as many classical notions of graph similarity diverge. However, its algebraic, geometric, and physical interpretations are reflected in the Laplacian pseudoinverse L, which remains finite in this limit. Motivated by this insight, we provide a probabilistic algorithm that reduces graphs while preserving L, using an unbiased procedure that minimizes its variance. We compare our algorithm with several existing sparsification and coarsening algorithms using real-world datasets, and demonstrate that it more accurately preserves the large-scale structure.
机译:如何“减少”图表?也就是说,生成一个较小的图形,以牺牲丢弃本地细节的代价来保留全局结构?在图纸稀疏(去除边缘)和图表中有广泛的工作(使用边缘收缩而粗略地缩小(合并节点);但是,这些操作目前正在分开处理。有趣的是,对于平面图,边缘缺失对应于其平面双(更常见的图形Matroid及其双重)的边缘收缩。此外,关于图表拉普拉斯(例如,扩散),缺失和收缩诱导的动态是两个倒数限制的物理表现:分别为0和∞的边缘重量。在这项工作中,我们提供了一个捕获这两个操作的统一框架,允许一个人同时稀疏,并在保留其大规模结构的同时同时缩小和粗化图。无限边缘重量的极限很少考虑,以及图形相似性分歧的许多经典概念。然而,它的代数,几何和物理解释反映在Laplacian伪荧光L中,这在该极限中保持有限。通过这种洞察力的激励,我们提供了一种概率算法,其使用最小化其方差的无偏别的过程来减少图的概率算法。我们将算法与几个现有的稀疏和粗化算法进行比较,使用现实世界数据集,并证明它更准确地保留大规模结构。

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