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Greedy Column Subset Selection: New Bounds and Distributed Algorithms

机译:贪婪列子集选择:新界和分布式算法

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The problem of column subset selection has recently attracted a large body of research, with feature selection serving as one obvious and important application. Among the techniques that have been applied to solve this problem, the greedy algorithm has been shown to be quite effective in practice. However, theoretical guarantees on its performance have not been explored thoroughly, especially in a distributed setting. In this paper, we study the greedy algorithm for the column subset selection problem from a theoretical and empirical perspective and show its effectiveness in a distributed setting. In particular, we provide an improved approximation guarantee for the greedy algorithm which we show is tight up to a constant factor, and present the first distributed implementation with provable approximation factors. We use the idea of randomized composable core-sets, developed recently in the context of submodular maximization. Finally, we validate the effectiveness of this distributed algorithm via an empirical study.
机译:柱子集选择的问题最近吸引了大量研究,功能选择用作一个明显且重要的应用。在解决这个问题的技术中,贪婪算法在实践中被证明是非常有效的。但是,理论上的表现上尚未彻底探讨,特别是在分布式环境中。在本文中,我们从理论和经验角度研究了列子集选择问题的贪婪算法,并在分布式环境中显示了其效力。特别是,我们为我们展示的贪婪算法提供了改进的近似保证,该算法紧紧达到恒定因子,并呈现了具有可提供的近似因子的第一分布式实现。我们使用最近在子模型最大化的上下文中开发的随机合成核心集的想法。最后,我们通过实证研究验证了这种分布式算法的有效性。

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