首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >A discrepancy-based parameter adaptation and stopping rule for minimization algorithms aiming at Tikhonov-type regularization
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A discrepancy-based parameter adaptation and stopping rule for minimization algorithms aiming at Tikhonov-type regularization

机译:针对Tikhonov型正则化的最小化算法的基于差异的参数自适应和停止规则

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摘要

We present a discrepancy-based parameter choice and stopping rule for iterative algorithms performing approximate Tikhonov-functional minimization which adapts the regularization parameter value during the optimization procedure. The suggested parameter choice and stopping rule can be applied to a wide class of penalty terms and iterative algorithms which aim at Tikhonov regularization with a fixed parameter value. It leads, in particular, to computable guaranteed estimates for the regularized exact discrepancy in terms of numerical approximations. Based on these estimates, convergence to a solution is shown. As an example, the developed theory and the algorithm is applied to the case of sparse regularization. We prove order optimal convergence rates in the case of sparse regularization, i.e. weighted ?_p norms, which turn out to be the same as for the a priori parameter choice rule already obtained in the literature as well as for Morozov's principle applied to exact regularized solutions. Finally, numerical results for two different minimization techniques, iterative soft thresholding algorithm and monotone fast iterative soft thresholding algorithm, are presented, confirming, in particular, the results from the theory.
机译:我们为执行近似Tikhonov功能最小化的迭代算法提供基于差异的参数选择和停止规则,该算法在优化过程中适应正则化参数值。所建议的参数选择和停止规则可以应用于各种惩罚项和迭代算法,这些算法旨在以固定的参数值进行Tikhonov正则化。尤其是,就数值近似而言,这导致了针对正则化精确差异的可计算保证估计。基于这些估计,显示了收敛到解决方案的方法。例如,将开发的理论和算法应用于稀疏正则化的情况。我们证明了在稀疏正则化情况下的阶次最优收敛速度,即加权α_p范数,事实证明与文献中已经获得的先验参数选择规则以及应用于精确正则化解的Morozov原理相同。最后,给出了两种不同的最小化技术的数值结果,分别是迭代软阈值算法和单调快速迭代软阈值算法,尤其是从理论上证实了这一结果。

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