Graph sparsification is a powerful tool to approximate an arbitrary graph and has been used in machine learning over homogeneous graphs. In heterogeneous graphs such as knowledge graphs, however, sparsification has not been systematically exploited to improve efficiency of learning tasks. In this work, we initiate the study on heterogeneous graph sparsification and develop sampling-based algorithms for constructing sparsifiers that are provably sparse and preserve important information in the original graphs. We have performed extensive experiments to confirm that the proposed method can improve time and space complexities of representation learning while achieving comparable, or even better performance in subsequent graph learning tasks based on the learned embedding.
翻译:图形封闭是近似任意图形的有力工具,用于对同质图形进行机器学习,但是,在知识图形等各种图表中,没有系统地利用“封闭”来提高学习任务的效率。在这项工作中,我们开始研究多式图形封闭,并开发基于取样的算法,用于建造可察觉的稀疏和保存原始图表中重要信息的“封闭器”。我们进行了广泛的实验,以确认拟议方法可以改善代表性学习的时间和空间复杂性,同时在所学嵌入的基础上实现可比较的,甚至提高以后的图形学习任务的业绩。