GraphSDH:一个具有分布和层次的通用图采样框架

Jingbo Hu, Guohao Dai, Yu Wang, Huazhong Yang
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引用次数: 1

摘要

大规模图在各种应用中发挥着至关重要的作用,但它受到处理时间长的限制。图采样是减少图数据量和加快算法速度的有效方法。然而,以往的工作往往缺乏与图算法模型相关的理论分析。本文基于以顶点为中心的图模型,建立了一种通用的大规模图采样框架GraphSDH (Graph Sampling with Distribution and Hierarchy)。根据四种常见的抽样技术,我们推导了抽样概率以最小化方差,并根据中间值是否存在预估计过程来优化设计。为了进一步提高图算法的精度,提出了基于顶点度的分层采样方法和基于采样位置分析的分层优化方案。在大型图上进行的大量实验表明,GraphSDH只对原始图的10%边缘进行采样,就可以达到95%以上的PageRank准确率,并且PageRank的速度比不采样的情况提高了几倍。与随机邻居抽样相比,GraphSDH在抽样邻居比(抽样分数)为20%的情况下,可以将PageRank的平均相对误差降低约17%。此外,GraphSDH可以应用于各种图算法,如广度优先搜索(BFS)、交替最小二乘(ALS)和标签传播算法(LPA)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GraphSDH: A General Graph Sampling Framework with Distribution and Hierarchy
Large-scale graphs play a vital role in various applications, but it is limited by the long processing time. Graph sampling is an effective way to reduce the amount of graph data and accelerate the algorithm. However, previous work usually lacks theoretical analysis related to graph algorithm models. In this study, GraphSDH (Graph Sampling with Distribution and Hierarchy), a general large-scale graph sampling framework is established based on the vertex-centric graph model. According to four common sampling techniques, we derive the sampling probability to minimize the variance, and optimize the design according to whether there is a pre-estimation process for the intermediate value. In order to further improve the accuracy of the graph algorithm, we propose a stratified sampling method based on vertex degree and a hierarchical optimization scheme based on sampling position analysis. Extensive experiments on large graphs show that GraphSDH can achieve over 95% accuracy for PageRank by sampling only 10% edges of the original graph, and speed up PageRank by several times than that of the non-sampling case. Compared with random neighbor sampling, GraphSDH can reduce the mean relative error of PageRank by about 17% at a sampling neighbor ratio (sampling fraction) of 20%. Furthermore, GraphSDH can be applied to various graph algorithms, such as Breadth-First Search (BFS), Alternating Least Squares (ALS) and Label Propagation Algorithm (LPA).
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