Pages that link to "Item:Q715137"
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The following pages link to Inverse problems for regularization matrices (Q715137):
Displaying 22 items.
- Regularization matrices determined by matrix nearness problems (Q281957) (← links)
- On the reduction of Tikhonov minimization problems and the construction of regularization matrices (Q715132) (← links)
- Matrix decompositions for Tikhonov regularization (Q896867) (← links)
- Weighted Tikhonov filter matrices for ill-posed problems. (Q1427877) (← links)
- Parameter determination for Tikhonov regularization problems in general form (Q1643811) (← links)
- Regularization of discrete ill-posed problems (Q1826453) (← links)
- An \(\ell^2\)-\(\ell^q\) regularization method for large discrete ill-posed problems (Q1999875) (← links)
- Rescaling the GSVD with application to ill-posed problems (Q2017617) (← links)
- A special modified Tikhonov regularization matrix for discrete ill-posed problems (Q2177871) (← links)
- Regularization of inverse problems by an approximate matrix-function technique (Q2234483) (← links)
- Simplified GSVD computations for the solution of linear discrete ill-posed problems (Q2252680) (← links)
- Data based regularization for discrete deconvolution problems (Q2376867) (← links)
- On the choice of subspace for large-scale Tikhonov regularization problems in general form (Q2414696) (← links)
- Adaptive cross approximation for Tikhonov regularization in general form (Q2679685) (← links)
- The use and properties of Tikhonov filter matrices (Q2706256) (← links)
- Near-optimal parameters for Tikhonov and other regularization methods (Q2780572) (← links)
- (Q3702386) (← links)
- (Q3825356) (← links)
- (Q4308996) (← links)
- Regularization matrices for discrete ill‐posed problems in several space dimensions (Q4684543) (← links)
- The eigenspace spectral regularization method for solving discrete ill-posed systems (Q6097682) (← links)
- Translation invariant diagonal frame decomposition of inverse problems and their regularization (Q6101041) (← links)