Spectral Clustering for Divide-and-Conquer Graph Matching
V. Lyzinski
D. Sussman
D. E. Fishkind
H. Pao
Li-Wei Chen
Joshua T. Vogelstein
Youngser Park
Carey E. Priebe

Abstract
We present a parallelized bijective graph matching algorithm that leverages seeds and is designed to match very large graphs. Our algorithm combines spectral graph embedding with existing state-of-the-art seeded graph matching procedures. We justify our approach by proving that modestly correlated, large stochastic block model random graphs are correctly matched utilizing very few seeds through our divide-and-conquer procedure. We also demonstrate the effectiveness of our approach in matching very large graphs in simulated and real data examples, showing up to a factor of 8 improvement in runtime with minimal sacrifice in accuracy.
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