Approximating Non-Uniform Sparsest Cut via Generalized Spectra
Venkatesan Guruswami, Ali Kemal Sinop

TL;DR
This paper introduces an approximation algorithm for non-uniform sparsest cut that leverages generalized eigenvalues of graph Laplacians, showing the problem becomes easier when the spectrum grows quickly, and employs advanced SDP and embedding techniques.
Contribution
It presents the first results based on higher order spectra for non-uniform sparsest cut, improving quantitative bounds even for uniform cases, and introduces novel embedding and rounding methods.
Findings
Approximation factor depends on the generalized eigenvalues of Laplacians.
Algorithm runs efficiently when the spectrum grows moderately fast.
Extends to other expansion measures like conductance and normalized cut.
Abstract
We give an approximation algorithm for non-uniform sparsest cut with the following guarantee: For any , given cost and demand graphs with edge weights respectively, we can find a set with at most times the optimal non-uniform sparsest cut value, in time provided . Here is the 'th smallest generalized eigenvalue of the Laplacian matrices of cost and demand graphs; (resp. ) is the weight of edges crossing the cut in cost (resp. demand) graph and is the sparsity of the optimal cut. In words, we show that the non-uniform sparsest cut problem is easy when the generalized spectrum grows moderately fast. To the best of our…
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Taxonomy
TopicsConducting polymers and applications · Graphene research and applications · Sparse and Compressive Sensing Techniques
