Tikhonov regularization is a common technique used when solving poorly behaved optimization problems. Often, and with good reason, this technique is applied by practitioners in an ad hoc fashion. In this note, we systematically illustrate the role of Tikhonov regularizations in two simple, yet instructive examples. In one example, we use regular perturbation theory to predict the impact Tikhonov regularizations have on condition numbers of symmetric, positive semi-definite matrices. We then use a numerical example to confirm our result. In another example, we construct an exactly solvable optimal control problem that exhibits a boundary layer phenomena. Since optimal control problems are rarely exactly solvable, this brings clarity to how v...
When deriving rates of convergence for the approximations generated by the application of Tikhonov r...
We extend the Tikhonov regularisation method widely used in optimisation and variational inequalitie...
The Tikhonov-Phillips method is widely used for regularizing ill-posed problems due to the simplicit...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
We present a discrepancy-based parameter choice and stopping rule for iterative algorithms performin...
d. In Tikhonov’s regularization approach, one additionally attempts to minimize the norm of Dm, wher...
New numerical procedure based on A.N.Tikhonov regularization method [1, 2] was elaborated. It is kno...
Abstract. We investigate the Tikhonov regularization of control con-strained optimal control problem...
Choosing the regularization parameter for an ill-posed problem is an art based on good heuristics an...
In this article we study the regularization of optimization problems by Tikhonov regularization. The...
Abstract. Many numerical methods for the solution of ill-posed problems are based on Tikhonov regula...
For G∈Rm×n and g∈Rm, the minimization min∥Gψ−g∥2, with ψ∈Rn, is known as the Tykhonov regularization...
Tikhonov regularization is one of the most popular approaches to solve discrete ill-posed problems w...
Inspirée par le travail de A. Tikhonov et V. Arsénine en optimisation convexe et par le développemen...
Summarization: The chapter deals with the parametric linear-convex mathematical programming (MP) pro...
When deriving rates of convergence for the approximations generated by the application of Tikhonov r...
We extend the Tikhonov regularisation method widely used in optimisation and variational inequalitie...
The Tikhonov-Phillips method is widely used for regularizing ill-posed problems due to the simplicit...
summary:We give a derivation of an a-posteriori strategy for choosing the regularization parameter i...
We present a discrepancy-based parameter choice and stopping rule for iterative algorithms performin...
d. In Tikhonov’s regularization approach, one additionally attempts to minimize the norm of Dm, wher...
New numerical procedure based on A.N.Tikhonov regularization method [1, 2] was elaborated. It is kno...
Abstract. We investigate the Tikhonov regularization of control con-strained optimal control problem...
Choosing the regularization parameter for an ill-posed problem is an art based on good heuristics an...
In this article we study the regularization of optimization problems by Tikhonov regularization. The...
Abstract. Many numerical methods for the solution of ill-posed problems are based on Tikhonov regula...
For G∈Rm×n and g∈Rm, the minimization min∥Gψ−g∥2, with ψ∈Rn, is known as the Tykhonov regularization...
Tikhonov regularization is one of the most popular approaches to solve discrete ill-posed problems w...
Inspirée par le travail de A. Tikhonov et V. Arsénine en optimisation convexe et par le développemen...
Summarization: The chapter deals with the parametric linear-convex mathematical programming (MP) pro...
When deriving rates of convergence for the approximations generated by the application of Tikhonov r...
We extend the Tikhonov regularisation method widely used in optimisation and variational inequalitie...
The Tikhonov-Phillips method is widely used for regularizing ill-posed problems due to the simplicit...