1 research outputs found
Distributed Subgraph Enumeration via Backtracking-based Framework
Finding or monitoring subgraph instances that are isomorphic to a given
pattern graph in a data graph is a fundamental query operation in many graph
analytic applications, such as network motif mining and fraud detection. The
state-of-the-art distributed methods are inefficient in communication. They
have to shuffle partial matching results during the distributed multiway join.
The partial matching results may be much larger than the data graph itself. To
overcome the drawback, we develop the Batch-BENU framework (B-BENU) for
distributed subgraph enumeration. B-BENU executes a group of local search tasks
in parallel. Each task enumerates subgraphs around a vertex in the data graph,
guided by a backtracking-based execution plan. B-BENU does not shuffle any
partial matching result. Instead, it stores the data graph in a distributed
database. Each task queries adjacency sets of the data graph on demand. To
support dynamic data graphs, we propose the concept of incremental pattern
graphs and turn continuous subgraph enumeration into enumerating incremental
pattern graphs at each time step. We develop the Streaming-BENU framework
(S-BENU) to enumerate their matches efficiently. We implement B-BENU and S-BENU
with the local database cache and the task splitting techniques. The extensive
experiments show that B-BENU and S-BENU can scale to big data graphs and
complex pattern graphs. They outperform the state-of-the-art methods by up to
one and two orders of magnitude, respectively.Comment: Modify some terms;Fix typos; Unify line styles in Fig. 13 and Fig. 1