SteinGen: Generating Fidelitous and Diverse Graph Samples
arxiv(2024)
摘要
Generating graphs that preserve characteristic structures while promoting
sample diversity can be challenging, especially when the number of graph
observations is small. Here, we tackle the problem of graph generation from
only one observed graph. The classical approach of graph generation from
parametric models relies on the estimation of parameters, which can be
inconsistent or expensive to compute due to intractable normalisation
constants. Generative modelling based on machine learning techniques to
generate high-quality graph samples avoids parameter estimation but usually
requires abundant training samples. Our proposed generating procedure,
SteinGen, which is phrased in the setting of graphs as realisations of
exponential random graph models, combines ideas from Stein's method and MCMC by
employing Markovian dynamics which are based on a Stein operator for the target
model. SteinGen uses the Glauber dynamics associated with an estimated Stein
operator to generate a sample, and re-estimates the Stein operator from the
sample after every sampling step. We show that on a class of exponential random
graph models this novel "estimation and re-estimation" generation strategy
yields high distributional similarity (high fidelity) to the original data,
combined with high sample diversity.
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