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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Designing Statistical Estimators That Balance Sample Size, Risk, and Computational Cost
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Designing Statistical Estimators That Balance Sample Size, Risk, and Computational Cost

机译:设计平衡样本量,风险和计算成本的统计估计量

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摘要

This paper proposes a tradeoff between computational time, sample complexity, and statistical accuracy that applies to statistical estimators based on convex optimization. When we have a large amount of data, we can exploit excess samples to decrease statistical risk, to decrease computational cost, or to trade off between the two. We propose to achieve this tradeoff by varying the amount of smoothing applied to the optimization problem. This work uses regularized linear regression as a case study to argue for the existence of this tradeoff both theoretically and experimentally. We also apply our method to describe a tradeoff in an image interpolation problem.
机译:本文提出了一种计算时间,样本复杂度和统计精度之间的折衷方案,该折衷方案适用于基于凸优化的统计估计量。当我们拥有大量数据时,我们可以利用过多的样本来降低统计风险,降低计算成本或在两者之间进行权衡。我们建议通过改变应用于优化问题的平滑量来实现这一折衷。这项工作使用正则化线性回归作为案例研究,从理论上和实验上证明了这种折衷的存在。我们还将应用我们的方法来描述图像插值问题中的权衡。

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