随机3MG算法及其在二维滤波器识别中的应用

É. Chouzenoux, J. Pesquet, A. Florescu
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引用次数: 4

摘要

随机优化在解决机器学习或自适应处理中遇到的许多问题中起着重要作用。在这种情况下,数据的二阶统计量往往是先验未知的,或者直接计算过于密集,必须从相关信号中在线估计。在批量优化的背景下,目标函数是数据保真度项和惩罚(例如稀疏性促进函数)的和,最大化最小化(MM)子空间方法最近吸引了很多人的兴趣,因为它们快速,高度灵活,有效地确保收敛。本文的目的是展示如何将这些方法成功地扩展到成本函数被随机逼近序列所取代的情况。仿真结果表明,所提出的记忆梯度(3MG)算法在二维滤波器识别中具有良好的实用性能。
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A stochastic 3MG algorithm with application to 2D filter identification
Stochastic optimization plays an important role in solving many problems encountered in machine learning or adaptive processing. In this context, the second-order statistics of the data are often unknown a priori or their direct computation is too intensive, and they have to be estimated on-line from the related signals. In the context of batch optimization of an objective function being the sum of a data fidelity term and a penalization (e.g. a sparsity promoting function), Majorize-Minimize (MM) subspace methods have recently attracted much interest since they are fast, highly flexible and effective in ensuring convergence. The goal of this paper is to show how these methods can be successfully extended to the case when the cost function is replaced by a sequence of stochastic approximations of it. Simulation results illustrate the good practical performance of the proposed MM Memory Gradient (3MG) algorithm when applied to 2D filter identification.
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