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Error Estimation for Randomized Least-Squares Algorithms via the Bootstrap

机译:通过Bootstrap估计随机最小二乘算法的误差

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Over the course of the past decade, a variety of randomized algorithms have been proposed for computing approximate least-squares (LS) solutions in large-scale settings. A longstanding practical issue is that, for any given input, the user rarely knows the actual error of an approximate solution (relative to the exact solution). Likewise, it is difficult for the user to know precisely how much computation is needed to achieve the desired error tolerance. Consequently, the user often appeals to worst-case error bounds that tend to offer only qualitative guidance. As a more practical alternative, we propose a bootstrap method to compute a posteriori error estimates for randomized LS algorithms. These estimates permit the user to numerically assess the error of a given solution, and to predict how much work is needed to improve a "preliminary" solution. In addition, we provide theoretical consistency results for the method, which are the first such results in this context (to the best of our knowledge). From a practical standpoint, the method also has considerable flexibility, insofar as it can be applied to several popular sketching algorithms, as well as a variety of error metrics. Moreover, the extra step of error estimation does not add much cost to an underlying sketching algorithm. Finally, we demonstrate the effectiveness of the method with empirical results.
机译:在过去的十年中,已经提出了各种随机算法来在大规模设置中计算近似最小二乘(LS)解决方案。一个长期存在的实际问题是,对于任何给定的输入,用户很少知道近似解的实际误差(相对于精确解)。同样,用户很难精确地知道需要多少计算才能达到所需的容错能力。因此,用户经常会诉诸于最坏情况的误差范围,这些误差范围往往仅提供定性指导。作为一种更实用的选择,我们提出了一种自举方法来计算随机LS算法的后验误差估计。这些估计值使用户可以用数字方式评估给定解决方案的错误,并预测需要多少工作来改进“初步”解决方案。此外,我们提供了该方法的理论一致性结果,这是在这种情况下(据我们所知)的第一个此类结果。从实践的角度来看,该方法还具有相当大的灵活性,因为它可以应用于几种流行的草图绘制算法以及各种误差度量。此外,误差估计的额外步骤不会为基础的草绘算法增加太多成本。最后,我们通过实验结果证明了该方法的有效性。

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