Graph disaggregation is a technique used to address the high cost of
computation for power law graphs on parallel processors. The few high-degree
vertices are broken into multiple small-degree vertices, in order to allow for
more efficient computation in parallel. In particular, we consider computations
involving the graph Laplacian, which has significant applications, including
diffusion mapping and graph partitioning, among others. We prove results
regarding the spectral approximation of the Laplacian of the original graph by
the Laplacian of the disaggregated graph. In addition, we construct an
alternate disaggregation operator whose eigenvalues interlace those of the
original Laplacian. Using this alternate operator, we construct a uniform
preconditioner for the original graph Laplacian.Comment: 19 page