Modeling Graphs Using a Mixture of Kronecker Models
Suchismit Mahapatra, Varun Chandola

TL;DR
This paper introduces xKPGM, a scalable graph generative model that captures both the properties and natural variance of real-world graph populations, improving over existing models that lack variance modeling.
Contribution
The paper proposes xKPGM, a mixture-model extension of KPGM, to better model the mean and variance of graph properties in populations, addressing overfitting and variance issues.
Findings
xKPGM effectively captures variability in real-world graphs.
The model scales to large graphs using fractal growth.
Experimental results show improved property matching.
Abstract
Generative models for graphs are increasingly becoming a popular tool for researchers to generate realistic approximations of graphs. While in the past, focus was on generating graphs which follow general laws, such as the power law for degree distribution, current models have the ability to learn from observed graphs and generate synthetic approximations. The primary emphasis of existing models has been to closely match different properties of a single observed graph. Such models, though stochastic, tend to generate samples which do not have significant variance in terms of the various graph properties. We argue that in many cases real graphs are sampled drawn from a graph population (e.g., networks sampled at various time points, social networks for individual schools, healthcare networks for different geographic regions, etc.). Such populations typically exhibit significant variance.…
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