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On greedy randomized coordinate descent methods for solving large linear least-squares problems

机译:关于求解大线性最小二乘问题的贪婪随机坐标序列方法

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摘要

For solving large scale linear least-squares problem by iteration methods, we introduce an effective probability criterion for selecting the working columns from the coefficient matrix and construct a greedy randomized coordinate descent method. It is proved that this method converges to the unique solution of the linear least-squares problem when its coefficient matrix is of full rank, with the number of rows being no less than the number of columns. Numerical results show that the greedy randomized coordinate descent method is more efficient than the randomized coordinate descent method.
机译:为了通过迭代方法求解大规模线性最小二乘问题,我们引入了用于从系数矩阵选择工作列的有效概率标准,并构造贪婪的随机坐标序列方法。 事实证明,该方法会聚到当系数矩阵为全等级时的线性最小二乘问题的唯一解决方案,行数不小于列数。 数值结果表明,贪婪的随机坐标缩进方法比随机坐标缩进方法更有效。

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