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Efficient Accelerated Coordinate Descent Methods and Faster Algorithms for Solving Linear Systems

机译:求解线性系统的高效加速坐标下降方法和更快算法

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In this paper we show how to accelerate randomized coordinate descent methods and achieve faster convergence rates without paying per-iteration costs in asymptotic running time. In particular, we show how to generalize and efficiently implement a method proposed by Nesterov, giving faster asymptotic running times for various algorithms that use standard coordinate descent as a black box. In addition to providing a proof of convergence for this new general method, we show that it is numerically stable, efficiently implementable, and in certain regimes, asymptotically optimal. To highlight the power of this algorithm, we show how it can used to create faster linear system solvers in several regimes: - We show how this method achieves a faster asymptotic runtime than conjugate gradient for solving a broad class of symmetric positive definite systems of equations. - We improve the convergence guarantees for Kaczmarz methods, a popular technique for image reconstruction and solving over determined systems of equations, by accelerating an algorithm of Strohmer and Vershynin. - We achieve the best known running time for solving Symmetric Diagonally Dominant (SDD) system of equations in the unit-cost RAM model, obtaining a running time of O(m log3/2n (log log n)1/2 log((log n)/eps)) by accelerating a recent solver by Kelner et al. Beyond the independent interest of these solvers, we believe they highlight the versatility of the approach of this paper and we hope that they will open the door for further algorithmic improvements in the future.
机译:在本文中,我们展示了如何加速随机坐标下降方法并获得更快的收敛速度,而又无需支付渐进运行时间的每次迭代成本。特别是,我们展示了如何归纳和有效实施Nesterov提出的方法,从而为使用标准坐标下降作为黑盒的各种算法提供更快的渐近运行时间。除了为这种新的通用方法提供收敛证明之外,我们还表明它在数值上稳定,有效地实现,并且在某些情况下是渐近最优的。为了突出此算法的功能,我们展示了如何在几种情况下创建更快的线性系统求解器:-我们展示了该方法与共轭梯度相比如何实现了更快的渐近运行时间,从而可以解决一类广泛的对称正定方程组。 -我们通过加速Strohmer和Vershynin算法,提高了Kaczmarz方法的收敛性保证,Kaczmarz方法是一种流行的图像重建技术,可以解决确定的方程组。 -我们获得了最著名的运行时间,用于求解单价RAM模型中的对称对角占优(SDD)方程组,获得的运行时间为O(m log3 / 2n(log log n)1/2 log((log n)/ eps))来加速Kelner等人的最新求解器。除了这些求解器的独立利益外,我们认为它们突出了本文方法的多功能性,并且希望它们为将来进一步的算法改进打开大门。

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