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📁 Hansen最新(2008)修订后的关于反演正则化方法的电子书与相应Matlab程序
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% Regularization Tools.% Version 4.1  9-march-08.% Copyright (c) 1993 and 1998 by Per Christian Hansen and IMM.%% Demonstration.%   regudemo  - Tutorial introduction to Regularization Tools.%% Test problems.%   baart     - Fredholm integral equation of the first kind.%   blur      - Image deblurring test problem with structured matrix.%   deriv2    - Computation of the second derivative.%   foxgood   - Severely ill-posed problem.%   gravity   - One-dimensional gravity surveying problem.%   heat      - Inverse heat equation.%   i_laplace - Inverse Laplace transformation.%   parallax  - Stellar parallax problem with 28 fixed observations.%   phillips  - Philips' "famous" test problem.%   shaw      - One-dimensional image restoration problem.%   spikes    - Test problem with a "spiky" solution.%   tomo      - Two-dimensional tomography problem with sparse matrix.%   ursell    - Integral equation with no square integrable solution.%   wing      - Test problem with a discontinuous solution.%% SVD- and GSVD-based regularization routines.%   discrep   - Minimizes the solution (semi-)norm subject to an upper%               bound on the residual norm (discrepancy principle).%   dsvd      - Computes the damped SVD/GSVD solution.%   lsqi      - Minimizes the residual norm subject to an upper bound%               on the (semi-)norm of the solution.%   mtsvd     - Computes the modified TSVD solution.%   tgsvd     - Computes the truncated GSVD solution.%   tikhonov  - Computes the Tikhonov regularized solution.%   tsvd      - Computes the truncated SVD solution.%   ttls      - Computes the truncated TLS solution.%% Iterative regularization routines.%   art       - Algebraic reconstruction technique (Kaczmarz's method).%   cgls      - Computes the least squares solution based on k steps%               of the conjugate gradient algorithm.%   lsqr_b    - Computes the least squares solution based on k steps%               of the LSQR algorithm (Lanczos bidiagonalization).%   maxent    - Computes the maximum entropy regularized solution.%   mr2       - Variant of MINRES with starting vector Ab.%   nu        - Computes the solution based on k steps of Brakhage's%               iterative nu-method.%   pcgls     - Same as cgls, but for general-form regularization.%   plsqr_b   - Same as lsqr, but for general-form regularization.%   pmr2      - Same as mr2, but for general-form regularization.%   pnu       - Same as nu, but for general-form regularization.%   prrgmres  - Same as rrgmres, but for general-form regularization.%   rrgmres   - Variant of GMRES with starting vector Ab.%   splsqr    - Computes an approximate Tikhonov solution via the%               subspace preconditioned LSQR algorithm.%% Analysis routines.%   corner    - Locates the corner of a discrete L-curve.%   fil_fac   - Computes filter factors for some regularization methods.%   gcv       - Plots the GCV function and computes its minimum.%   l_corner  - Locates the L-shaped corner of the L-curve.%   l_curve   - Computes the L-curve, plots it, and computes its corner.%   lagrange  - Plots the Lagrange function ||Ax-b||^2 + lambda^2*||Lx||^2,%               and its derivative.%   ncp       - Plots normalized cumulative periodograms (NCPs) and finds%               the one closest to a straight line.%   picard    - Plots the (generalized) singular values, the Fourier%               coefficient for the right-hand side, and a (smoothed curve%               of) the solution's Fourier-coefficients. %   plot_lc   - Plots an L-curve.%   quasiopt  - Plots the quasi-optimality function and computes its minimum.%% Routines for transforming a problem in general form into one in% standard form, and back again.%   gen_form  - Transforms a standard-form solution back into the%               general-form setting.%   std_form  - Transforms a general-form problem into one in%               standard form.% % Utility routines.%   bidiag    - Bidiagonalization of a matrix by Householder transformations.%   cgsvd     - Computes the compact generalized SVD of a matrix pair.%   csvd      - Computes the compact SVD of an m-by-n matrix.%   get_l     - Produces a p-by-n matrix which is the discrete%               approximation to the d'th order derivative operator.%   lanc_b    - Performs k steps of the Lanczos bidiagonalization%               process with/without reorthogonalization.%   regutm    - Generates random test matrices for regularization methods.%% Auxiliary routines required by some of the above routines.%   app_hh    - Applies a Householder transformation from the left.%   gen_hh    - Generates a Householder transformation.%   lsolve    - Inversion with A-weighted generalized inverse of L.%   ltsolve   - Inversion with transposed A-weighted inverse of L.%   pinit     - Initialization for treating general-form problems.%   spleval   - Computes points on a spline or spline curve. % The following four routines are not documented, since they are only used% internally by gcv, l_corner, and quasiopt, respectively.  They cannot be% located as private functions.%   gcvfun    - Computes the GCV function%   lcfun     - Computes the curvature of the L-curve%   ncpfun    - Computes the NCP's distance to a straight line.%   quasifun  - Computes the quasi-optimality function.%% For backward compatibility, the function l_corner uses the Spline% Toolbox when available, otherwise is used the new function corner.

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