Efficient Parallel Computing of Graph Edit Distance

Ran Wang, Yixiang Fang, Xing Feng
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引用次数: 4

Abstract

With the prevalence of graph data, graph edit distance (GED), a well-known measure of similarity between two graphs, has been widely used in many real applications, such as graph classification and clustering, similar object detection, and biology network analysis. Despite its usefulness and popularity, GED is computationally costly, because it is NP-hard. Currently, most existing solutions focus on computing GED in a serial manner and little attention has been paid for parallel computing. In this paper, we propose a novel efficient parallel algorithm for computing GED. Our algorithm is based on the state[1]of-the-art GED algorithm AStar+-LSa, and is called PGED. The main idea of PGED is to allocate the heavy workload of searching the optimal vertex mapping between two graphs, which is the most time consuming step, to multiple threads based on an effective allocation strategy, resulting in high efficiency of GED computation. We have evaluated PGED on two real datasets, and the experimental results show that by using multiple threads, PGED is more efficient than AStar+-LSa. In addition, by carefully tuning the parameters, the performance of PGED can be further improved.
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图形编辑距离的高效并行计算
随着图数据的普及,图编辑距离(GED)作为两个图之间的相似度度量,已被广泛应用于许多实际应用,如图分类和聚类、相似目标检测和生物网络分析。尽管它很有用而且很受欢迎,但是由于它是NP-hard的,因此在计算上是昂贵的。目前,大多数解决方案都集中在以串行方式计算GED,而很少关注并行计算。在本文中,我们提出了一种新的高效并行算法来计算GED。我们的算法基于最先进的状态GED算法AStar+-LSa,称为PGED。PGED的主要思想是基于有效的分配策略,将搜索两个图之间最优顶点映射的繁重工作分配给多个线程,从而提高了GED的计算效率。我们在两个真实的数据集上对PGED进行了评估,实验结果表明,在使用多线程的情况下,PGED比AStar+-LSa更高效。此外,通过对参数的精心调整,可以进一步提高PGED的性能。
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