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Sketching Structured Matrices for Faster Nonlinear Regression

机译:素描结构化矩阵以更快的非线性回归

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Motivated by the desire to extend fast randomized techniques to nonlinear l_p regression, we consider a class of structured regression problems. These problems involve Vandermonde matrices which arise naturally in various statistical modeling settings, including classical polynomial fitting problems, additive models and approximations to recently developed randomized techniques for scalable kernel methods. We show that this structure can be exploited to further accelerate the solution of the regression problem, achieving running times that are faster than "input sparsity". We present empirical results confirming both the practical value of our modeling framework, as well as speedup benefits of randomized regression.
机译:通过希望将快速随机技术扩展到非线性L_P回归的愿望,我们考虑一类结构化回归问题。这些问题涉及在各种统计建模设置中自然出现的Vandermonde矩阵,包括经典多项式拟合问题,附加模型和最近开发了可伸缩内核方法的随机技术的近似。我们表明,可以利用这种结构来进一步加速回归问题的解决方案,实现比“输入稀疏性”更快的运行时间。我们提出了证实我们建模框架的实际价值的实证结果,以及随机回归的加速益处。

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