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Block-Wise Minimization-Majorization Algorithm for Huber'S Criterion: Sparse Learning and Applications

机译:Huber准则的块明智最小化最大化算法:稀疏学习和应用

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Huber's criterion can be used for robust joint estimation of regression and scale parameters in the linear model. Huber's [1] motivation for introducing the criterion stemmed from nonconvexity of the joint maximum likelihood objective function as well as non-robustness (unbounded influence function) of the associated ML-estimate of scale. In this paper, we illustrate how the original algorithm proposed by Huber can be set within the block-wise minimization majorization framework. In addition, we propose novel data-adaptive step sizes for both the location and scale, which are further improving the convergence. We then illustrate how Huber's criterion can be used for sparse learning of underdetermined linear model using the iterative hard thresholding approach. We illustrate the usefulness of the algorithms in an image denoising application and simulation studies.
机译:Huber准则可用于线性模型中回归和比例参数的鲁棒联合估计。 Huber [1]引入标准的动机来自联合最大似然目标函数的非凸性以及相关的ML估计的非稳健性(无界影响函数)。在本文中,我们说明了如何在块状最小化最大化框架内设置Huber提出的原始算法。此外,我们针对位置和规模提出了新颖的数据自适应步长,这将进一步提高收敛性。然后,我们说明如何使用迭代硬阈值方法将Huber准则用于欠定线性模型的稀疏学习。我们说明了算法在图像去噪应用和仿真研究中的有用性。

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