go back

Volume 17, No. 5

LM-SRPQ: Efficiently Answering Regular Path Query in Streaming Graphs

Authors:
Xiangyang Gou, Xinyi Ye, Lei Zou, Jeffrey Xu Yu

Abstract

Regular path query (RPQ) is a basic operation for graph data analysis, and persistent RPQ in streaming graphs is a new-emerging research topic. In this paper, we propose a novel algorithm for persistent RPQ in streaming graphs, named LM-SRPQ. It solves persistent RPQ with a combination of intermediate result materialization and real-time graph traversal. Compared to prior art, it merges redundant storage and computation, achieving higher memory and time efficiency. We carry out extensive experiments with both real-world and synthetic streaming graphs to evaluate its performance. Experiment results confirm its superiority compared to prior art in both memory and time efficiency.

PVLDB is part of the VLDB Endowment Inc.

Privacy Policy