On the optimality of the median cut spectral bisection graph partitioning method
1997
Publication type:
Paper in peer-reviewed journals
Journal:
SIAM Journal on Scientific Computing, vol. 18(3), pp. 943-948
HAL:
Abstract:
Recursive spectral bisection (RSB) is a heuristic technique for finding a minimum cut graph bisection. To use this method the second eigenvector of the Laplacian of the graph is computed and from it a bisection is obtained. The most common method is to use the median of the components of the second eigenvector to induce a bisection. We prove here that this median cut method is optimal in the sense that the partition vector induced by it is the closest partition vector, in any ls norm, for $s\ge1$, to the second eigenvector. Moreover, we prove that the same result also holds for any m-partition, that is, a partition into m and (n-m)$ vertices, when using the mth largest or smallest components of the second eigenvector.
Copyright © 1997 Society for Industrial and Applied Mathematics
BibTeX:
@article{Cha-Cia-Sze-1997, author={Tony F. Chan and Patrick Ciarlet and W. K. Szeto }, title={On the optimality of the median cut spectral bisection graph partitioning method }, doi={10.1137/S1064827594262649 }, journal={SIAM Journal on Scientific Computing }, year={1997 }, volume={18(3) }, pages={943--948}, }