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Convex Optimization for Big Data: Scalable, randomized, and parallel algorithms for big data analytics

机译:大数据的凸优化:大数据分析的可扩展,随机和并行算法

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摘要

This article reviews recent advances in convex optimization algorithms for big data, which aim to reduce the computational, storage, and communications bottlenecks. We provide an overview of this emerging field, describe contemporary approximation techniques such as first-order methods and randomization for scalability, and survey the important role of parallel and distributed computation. The new big data algorithms are based on surprisingly simple principles and attain staggering accelerations even on classical problems.
机译:本文回顾了大数据凸优化算法的最新进展,该算法旨在减少计算,存储和通信瓶颈。我们提供了这个新兴领域的概述,描述了当代逼近技术,例如一阶方法和可扩展性的随机化,并调查了并行和分布式计算的重要作用。新的大数据算法基于令人惊讶的简单原理,即使在经典问题上也能实现惊人的加速。

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