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GraphGen: A Scalable Approach to Domain-agnostic Labeled Graph Generation

About

Graph generative models have been extensively studied in the data mining literature. While traditional techniques are based on generating structures that adhere to a pre-decided distribution, recent techniques have shifted towards learning this distribution directly from the data. While learning-based approaches have imparted significant improvement in quality, some limitations remain to be addressed. First, learning graph distributions introduces additional computational overhead, which limits their scalability to large graph databases. Second, many techniques only learn the structure and do not address the need to also learn node and edge labels, which encode important semantic information and influence the structure itself. Third, existing techniques often incorporate domain-specific rules and lack generalizability. Fourth, the experimentation of existing techniques is not comprehensive enough due to either using weak evaluation metrics or focusing primarily on synthetic or small datasets. In this work, we develop a domain-agnostic technique called GraphGen to overcome all of these limitations. GraphGen converts graphs to sequences using minimum DFS codes. Minimum DFS codes are canonical labels and capture the graph structure precisely along with the label information. The complex joint distributions between structure and semantic labels are learned through a novel LSTM architecture. Extensive experiments on million-sized, real graph datasets show GraphGen to be 4 times faster on average than state-of-the-art techniques while being significantly better in quality across a comprehensive set of 11 different metrics. Our code is released at https://github.com/idea-iitd/graphgen.

Nikhil Goyal, Harsh Vardhan Jain, Sayan Ranu• 2020

Related benchmarks

TaskDatasetResultRank
Graph generationSBM
VUN0.05
51
Graph generationPlanar
V.U.N.7.5
48
Graph generationTree
A.Ratio33.2
36
Synthetic Graph GenerationPlanar Dataset
Degree Statistic0.0328
27
Graph generationPlanar Graphs (test)
Unique Node %7.5
25
Plain graph generationStochastic block model (SBM)
VUN Score5
16
Plain graph generationPlanar Dataset
VUN Score7.5
15
Synthetic Graph GenerationTree Dataset
Degree Similarity0.0105
11
Plain graph generationTree Dataset
Validity95
11
General Graph GenerationTree (test)
V.U.N.95
7
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