Multi-parameter Tikhonov regularization and model function approach to the damped Morozov principle for choosing regularization parameters
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摘要
In this paper, we study the multi-parameter Tikhonov regularization method which adds multiple different penalties to exhibit multi-scale features of the solution. An optimal error bound of the regularization solution is obtained by a priori choice of multiple regularization parameters. Some theoretical results of the regularization solution about the dependence on regularization parameters are presented. Then, an a posteriori parameter choice, i.e., the damped Morozov discrepancy principle, is introduced to determine multiple regularization parameters. Five model functions, i.e., two hyperbolic model functions, a linear model function, an exponential model function and a logarithmic model function, are proposed to solve the damped Morozov discrepancy principle. Furthermore, four efficient model function algorithms are developed for finding reasonable multiple regularization parameters, and their convergence properties are also studied. Numerical results of several examples show that the damped discrepancy principle is competitive with the standard one, and the model function algorithms are efficient for choosing regularization parameters.
论文关键词:Inverse problems,Multi-parameter Tikhonov regularization,Damped Morozov principle,Model function method,Parameter choice
论文评审过程:Received 15 July 2010, Revised 28 July 2011, Available online 29 October 2011.
论文官网地址:https://doi.org/10.1016/j.cam.2011.10.014