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PNAS Plus: Computational and statistical tradeoffs via convex relaxation

机译:PNAS Plus:通过凸松弛进行计算和统计折衷

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摘要

Modern massive datasets create a fundamental problem at the intersection of the computational and statistical sciences: how to provide guarantees on the quality of statistical inference given bounds on computational resources, such as time or space. Our approach to this problem is to define a notion of “algorithmic weakening,” in which a hierarchy of algorithms is ordered by both computational efficiency and statistical efficiency, allowing the growing strength of the data at scale to be traded off against the need for sophisticated processing. We illustrate this approach in the setting of denoising problems, using convex relaxation as the core inferential tool. Hierarchies of convex relaxations have been widely used in theoretical computer science to yield tractable approximation algorithms to many computationally intractable tasks. In the current paper, we show how to endow such hierarchies with a statistical characterization and thereby obtain concrete tradeoffs relating algorithmic runtime to amount of data.
机译:现代海量数据集在计算科学与统计科学的交汇处提出了一个基本问题:在给定计算资源(例如时间或空间)的界限的情况下,如何为统计推断的质量提供保证。我们针对此问题的方法是定义“算法弱化”的概念,其中算法的层次结构按计算效率和统计效率进行排序,从而可以权衡不断增长的规模数据与对复杂数据的需求。处理。我们使用凸松弛作为核心推理工具,说明了在去噪问题中的这种方法。凸松弛的层次结构已在理论计算机科学中广泛用于为许多计算上难以处理的任务提供易于处理的近似算法。在当前的论文中,我们展示了如何赋予此类层次结构以统计特征,从而获得将算法运行时间与数据量相关联的具体折衷。

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