...
首页> 外文期刊>Signal Processing, IEEE Transactions on >Forward–Backward Greedy Algorithms for Atomic Norm Regularization
【24h】

Forward–Backward Greedy Algorithms for Atomic Norm Regularization

机译:原子范数正则化的前向后向贪婪算法

获取原文
获取原文并翻译 | 示例
           

摘要

In many signal processing applications, the aim is to reconstruct a signal that has a simple representation with respect to a certain basis or frame. Fundamental elements of the basis known as “atoms” allow us to define “atomic norms” that can be used to formulate convex regularizations for the reconstruction problem. Efficient algorithms are available to solve these formulations in certain special cases, but an approach that works well for general atomic norms, both in terms of speed and reconstruction accuracy, remains to be found. This paper describes an optimization algorithm called CoGEnT that produces solutions with succinct atomic representations for reconstruction problems, generally formulated with atomic-norm constraints. CoGEnT combines a greedy selection scheme based on the conditional gradient approach with a backward (or “truncation”) step that exploits the quadratic nature of the objective to reduce the basis size. We establish convergence properties and validate the algorithm via extensive numerical experiments on a suite of signal processing applications. Our algorithm and analysis also allow for inexact forward steps and for occasional enhancements of the current representation to be performed. CoGEnT can outperform the basic conditional gradient method, and indeed many methods that are tailored to specific applications, when the enhancement and truncation steps are defined appropriately. We also introduce several novel applications that are enabled by the atomic-norm framework, including tensor completion, moment problems in signal processing, and graph deconvolution.
机译:在许多信号处理应用中,目标是重建相对于特定基础或帧具有简单表示的信号。基础的基本要素被称为“原子”,使我们能够定义“原子范数”,该范数可用于为重建问题制定凸正则化。在某些特殊情况下,可以使用有效的算法来求解这些公式,但是仍然需要找到一种适用于一般原子规范的方法,无论是速度还是重构精度。本文介绍了一种称为CoGEnT的优化算法,该算法可针对重构问题生成具有简洁原子表示形式的解决方案,通常使用原子范数约束来表示。 CoGEnT将基于条件梯度方法的贪婪选择方案与后向(或“截断”)步骤相结合,后者利用物镜的二次性质来减小基本尺寸。我们建立收敛性,并通过在一组信号处理应用程序上进行的大量数值实验来验证算法。我们的算法和分析还允许不精确的前进步骤,并偶尔进行当前表示的增强。当适当地定义增强和截断步骤时,CoGEnT的性能可超越基本条件梯度方法,甚至胜过许多针对特定应用量身定制的方法。我们还介绍了原子范数框架支持的几种新颖应用程序,包括张量完成,信号处理中的矩问题和图形反卷积。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号