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A Randomized Solver for Linear Systems with Exponential Convergence

机译:具有指数收敛性的线性系统的随机解算器

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摘要

The Kaczmarz method for solving linear systems of equations Ax = b is an iterative algorithm that has found many applications ranging from computer tomography to digital signal processing. Despite the popularity of this method, useful theoretical estimates for its rate of convergence are still scarce. We introduce a randomized version of the Kaczmarz method for overdetermined linear systems and we prove that it converges with expected exponential rate. Furthermore, this is the first solver whose rate does not depend on the number of equations in the system. The solver does not even need to know the whole system, but only its small random part. It thus outperforms all previously known methods on extremely overdetermined systems. Even for moderately overdetermined systems, numerical simulations reveal that our algorithm can converge faster than the celebrated conjugate gradient algorithm.
机译:用于解方程组Ax = b的线性系统的Kaczmarz方法是一种迭代算法,已发现从计算机层析成像到数字信号处理的许多应用。尽管这种方法很流行,但对于其收敛速度的有用理论估计仍然很少。对于超定线性系统,我们引入了Kaczmarz方法的随机版本,并证明了它与期望的指数速率收敛。此外,这是第一个求解器,其求解速率不依赖于系统中的方程式数量。求解器甚至不需要了解整个系统,而只需了解其很小的随机部分。因此,它在极端超定的系统上胜过所有先前已知的方法。即使对于中度超定的系统,数值模拟也表明我们的算法可以比著名的共轭梯度算法收敛得更快。

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