DSNAOCMLJan 21, 2019

Iterative Refinement for $\ell_p$-norm Regression

arXiv:1901.06764v142 citations
Originality Incremental advance
AI Analysis

This provides faster algorithms for ℓp-norm regression, impacting optimization and graph theory applications, but is incremental over prior work.

The paper tackles the ℓp-norm regression problem for p in (1,2) ∪ (2,∞), achieving improved algorithms that solve it to high accuracy in Õp(m^(|p-2|/(2p+|p-2|))) ≤ Õp(m^(1/3)) iterations, with running times as fast as ℓ2 regression for constant p bounded away from 1, and applying to graph problems with Õp(m^(1+|p-2|/(2p+|p-2|))) ≤ Õp(m^(4/3)) time.

We give improved algorithms for the $\ell_{p}$-regression problem, $\min_{x} \|x\|_{p}$ such that $A x=b,$ for all $p \in (1,2) \cup (2,\infty).$ Our algorithms obtain a high accuracy solution in $\tilde{O}_{p}(m^{\frac{|p-2|}{2p + |p-2|}}) \le \tilde{O}_{p}(m^{\frac{1}{3}})$ iterations, where each iteration requires solving an $m \times m$ linear system, $m$ being the dimension of the ambient space. By maintaining an approximate inverse of the linear systems that we solve in each iteration, we give algorithms for solving $\ell_{p}$-regression to $1 / \text{poly}(n)$ accuracy that run in time $\tilde{O}_p(m^{\max\{ω, 7/3\}}),$ where $ω$ is the matrix multiplication constant. For the current best value of $ω> 2.37$, we can thus solve $\ell_{p}$ regression as fast as $\ell_{2}$ regression, for all constant $p$ bounded away from $1.$ Our algorithms can be combined with fast graph Laplacian linear equation solvers to give minimum $\ell_{p}$-norm flow / voltage solutions to $1 / \text{poly}(n)$ accuracy on an undirected graph with $m$ edges in $\tilde{O}_{p}(m^{1 + \frac{|p-2|}{2p + |p-2|}}) \le \tilde{O}_{p}(m^{\frac{4}{3}})$ time. For sparse graphs and for matrices with similar dimensions, our iteration counts and running times improve on the $p$-norm regression algorithm by [Bubeck-Cohen-Lee-Li STOC`18] and general-purpose convex optimization algorithms. At the core of our algorithms is an iterative refinement scheme for $\ell_{p}$-norms, using the smoothed $\ell_{p}$-norms introduced in the work of Bubeck et al. Given an initial solution, we construct a problem that seeks to minimize a quadratically-smoothed $\ell_{p}$ norm over a subspace, such that a crude solution to this problem allows us to improve the initial solution by a constant factor, leading to algorithms with fast convergence.

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