Composable Core-sets for Determinant Maximization Problems via Spectral Spanners
July 31, 2018 Β· Declared Dead Β· π ACM-SIAM Symposium on Discrete Algorithms
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Authors
Piotr Indyk, Sepideh Mahabadi, Shayan Oveis Gharan, Alireza Rezaei
arXiv ID
1807.11648
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.LG,
stat.ML
Citations
22
Venue
ACM-SIAM Symposium on Discrete Algorithms
Last Checked
3 months ago
Abstract
We study a spectral generalization of classical combinatorial graph spanners to the spectral setting. Given a set of vectors $V\subseteq \Re^d$, we say a set $U\subseteq V$ is an $Ξ±$-spectral spanner if for all $v\in V$ there is a probability distribution $ΞΌ_v$ supported on $U$ such that $$vv^\intercal \preceq Ξ±\cdot\mathbb{E}_{u\simΞΌ_v} uu^\intercal.$$ We show that any set $V$ has an $\tilde{O}(d)$-spectral spanner of size $\tilde{O}(d)$ and this bound is almost optimal in the worst case. We use spectral spanners to study composable core-sets for spectral problems. We show that for many objective functions one can use a spectral spanner, independent of the underlying functions, as a core-set and obtain almost optimal composable core-sets. For example, for the determinant maximization problem we obtain an $\tilde{O}(k)^k$-composable core-set and we show that this is almost optimal in the worst case. Our algorithm is a spectral analogue of the classical greedy algorithm for finding (combinatorial) spanners in graphs. We expect that our spanners find many other applications in distributed or parallel models of computation. Our proof is spectral. As a side result of our techniques, we show that the rank of diagonally dominant lower-triangular matrices are robust under `small perturbations' which could be of independent interests.
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