Weighted Laplacian and Its Theoretical Applications
Shijie Xu, Jiayan Fang, Xiang-Yang Li

TL;DR
This paper introduces a new weighted Laplacian method inspired by graph theory and PDEs, providing robust theoretical guarantees and demonstrating improved performance in graph partitioning and cut problems.
Contribution
The paper develops a novel weighted Laplacian approach that enhances spectral graph algorithms with stronger theoretical foundations and practical effectiveness.
Findings
Outperforms existing algorithms in accuracy
Establishes theoretical equivalences among graph problems
Demonstrates practical utility in multilevel graph partitioning
Abstract
In this paper, we develop a novel weighted Laplacian method, which is partially inspired by the theory of graph Laplacian, to study recent popular graph problems, such as multilevel graph partitioning and balanced minimum cut problem, in a more convenient manner. Since the weighted Laplacian strategy inherits the virtues of spectral methods, graph algorithms designed using weighted Laplacian will necessarily possess more robust theoretical guarantees for algorithmic performances, comparing with those existing algorithms that are heuristically proposed. In order to illustrate its powerful utility both in theory and in practice, we also present two effective applications of our weighted Laplacian method to multilevel graph partitioning and balanced minimum cut problem, respectively. By means of variational methods and theory of partial differential equations (PDEs), we have established…
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