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Adaptive multi-penalty regularization based on a generalized Lasso path

机译:基于广义套索路径的自适应多罚规范化

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摘要

For many algorithms, parameter tuning remains a challenging task, which becomes tedious in a multi-parameter setting. Multi-penalty regularization, successfully used for solving undetermined sparse regression problems of unmixing type, is one of such examples. We propose a novel algorithmic framework for an adaptive parameter choice in multi-penalty regularization with focus on correct support recovery. By extending ideas on regularization paths, we provide an efficient procedure for the construction of regions containing structurally similar solutions, i.e., solutions with the same sparsity and sign pattern, over the range of parameters. Combined with a model selection criterion, regularization parameters are chosen in a data-adaptive manner. Another advantage of our algorithm is that it provides an overview on the solution stability over the parameter range. We provide a numerical analysis of our method and compare it to the state-of-the-art algorithms for compressed sensing problems to demonstrate the robustness and power of the proposed algorithm. (C) 2018 Elsevier Inc. All rights reserved.
机译:对于许多算法,参数调整仍然是一个具有挑战性的任务,它在多参数设置中变得繁琐。多惩罚正则化,成功用于解决未固定类型的未确定稀疏回归问题,是这样的示例之一。我们提出了一种新颖的算法框架,用于多处常正则化的自适应参数选择,重点是正确的支持恢复。通过在正则化路径上扩展思路,我们提供了一个有效的过程,用于构建包含结构相似的解决方案的区域,即具有相同稀疏性和标志图案的解决方案,在参数范围内。结合模型选择标准,以数据适应方式选择正则化参数。我们的算法的另一个优点是它提供了在参数范围内解决方案稳定性的概述。我们对我们的方法提供了数值分析,并将其与最先进的算法进行了比较,用于压缩传感问题,以展示所提出的算法的稳健性和功率。 (c)2018 Elsevier Inc.保留所有权利。

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