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Regularization Methods in Banach Spaces
Contributor(s): Schuster, Thomas (Author), Kaltenbacher, Barbara (Author), Hofmann, Bernd (Author)
ISBN: 3110255243     ISBN-13: 9783110255249
Publisher: de Gruyter
OUR PRICE:   $228.00  
Product Type: Hardcover - Other Formats
Published: July 2012
Qty:
Temporarily out of stock - Will ship within 2 to 5 weeks
Additional Information
BISAC Categories:
- Mathematics | Applied
- Mathematics | Functional Analysis
- Mathematics | Transformations
Dewey: 515.732
LCCN: 2012013065
Physical Information: 0.69" H x 6.69" W x 9.61" (1.48 lbs) 294 pages
 
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Publisher Description:

Regularization methods aimed at finding stable approximate solutions are a necessary tool to tackle inverse and ill-posed problems. Inverse problems arise in a large variety of applications ranging from medical imaging and non-destructive testing via finance to systems biology. Many of these problems belong to the class of parameter identification problems in partial differential equations (PDEs) and thus are computationally demanding and mathematically challenging. Hence there is a substantial need for stable and efficient solvers for this kind of problems as well as for a rigorous convergence analysis of these methods.

This monograph consists of five parts. Part I motivates the importance of developing and analyzing regularization methods in Banach spaces by presenting four applications which intrinsically demand for a Banach space setting and giving a brief glimpse of sparsity constraints. Part II summarizes all mathematical tools that are necessary to carry out an analysis in Banach spaces. Part III represents the current state-of-the-art concerning Tikhonov regularization in Banach spaces. Part IV about iterative regularization methods is concerned with linear operator equations and the iterative solution of nonlinear operator equations by gradient type methods and the iteratively regularized Gau -Newton method. Part V finally outlines the method of approximate inverse which is based on the efficient evaluation of the measured data with reconstruction kernels.