Sparsifying Sums of Positive Semidefinite Matrices
Arpon Basu, Pravesh K. Kothari, Yang P. Liu, Raghu Meka

TL;DR
This paper introduces a new theory for sparsifying sums of positive semidefinite matrices, providing instance-specific bounds and applying it to improve Cayley graph sparsification.
Contribution
It develops a novel PSD matrix sparsification framework based on the connectivity threshold, enabling tighter bounds and extending Cayley graph sparsification to general groups.
Findings
Achieves sparsifiers with O(ε^{-2} N^*(A) (log n)(log r)) matrices
Proves N^*(A) is necessary for sparsification with ε<0.99
Improves Cayley graph sparsification bounds to O(ε^{-2} log^4 N) generators
Abstract
In this paper, we revisit spectral sparsification for sums of arbitrary positive semidefinite (PSD) matrices. Concretely, for any collection of PSD matrices , given any subset , our goal is to find sparse weights such that This generalizes spectral sparsification of graphs which corresponds to being the set of Laplacians of edges. It also captures sparsifying Cayley graphs by choosing a subset of generators. The former has been extensively studied with optimal sparsifiers known. The latter has received attention recently and was solved for a few special groups (e.g., ). Prior work shows any sum of PSD matrices can be…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Complexity and Algorithms in Graphs · Advanced Optimization Algorithms Research
