Network alignment, or the task of finding corresponding nodes in different networks, is an important problem formulation in many application domains. We propose CAPER, a multilevel alignment framework that Coarsens the input graphs, Aligns the coarsened graphs, Projects the alignment solution to finer levels and Refines the alignment solution. We show that CAPER can improve upon many different existing network alignment algorithms by enforcing alignment consistency across multiple graph resolutions: nodes matched at finer levels should also be matched at coarser levels. CAPER also accelerates the use of slower network alignment methods, at the modest cost of linear-time coarsening and refinement steps, by allowing them to be run on smaller coarsened versions of the input graphs. Experiments show that CAPER can improve upon diverse network alignment methods by an average of 33% in accuracy and/or an order of magnitude faster in runtime.
翻译:网络对齐或在不同网络中找到相应的节点的任务,是许多应用领域的一个重要问题配置。我们提议CAPER,这是一个多层次对齐框架,可分析输入图、对齐粗略图表、对准粗略图表、对准调整解决方案进行细化,并精细调整解决方案。我们显示CAPER可以通过在多个图形分辨率中加强一致性,改进许多不同的现有网络对齐算法:在更细层次上匹配的节点也应与粗略水平相匹配。CAPER还加快使用较慢的网络对齐方法,其成本为线性粗略的粗略和精细化步骤,允许它们以较小的粗略粗略输入图版本运行。实验显示CAPER在运行过程中能够通过不同网络对齐方法提高平均33%的精确度和/或速度更快的量级。