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A simple implementation of the Levenberg-Marquardt algorithm in plain C
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This file (with a leading space) exists so that the gist has a sensible name, rather than "LICENSE." |
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/* | |
* levmarq.c | |
* | |
* This file contains an implementation of the Levenberg-Marquardt algorithm | |
* for solving least-squares problems, together with some supporting routines | |
* for Cholesky decomposition and inversion. No attempt has been made at | |
* optimization. In particular, memory use in the matrix routines could be | |
* cut in half with a little effort (and some loss of clarity). | |
* | |
* It is assumed that the compiler supports variable-length arrays as | |
* specified by the C99 standard. | |
* | |
* Ron Babich, May 2008 | |
* | |
*/ | |
#include <stdio.h> | |
#include <math.h> | |
#include "levmarq.h" | |
#define TOL 1e-30 /* smallest value allowed in cholesky_decomp() */ | |
/* set parameters required by levmarq() to default values */ | |
void levmarq_init(LMstat *lmstat) | |
{ | |
lmstat->verbose = 0; | |
lmstat->max_it = 10000; | |
lmstat->init_lambda = 0.0001; | |
lmstat->up_factor = 10; | |
lmstat->down_factor = 10; | |
lmstat->target_derr = 1e-12; | |
} | |
/* perform least-squares minimization using the Levenberg-Marquardt | |
algorithm. The arguments are as follows: | |
npar number of parameters | |
par array of parameters to be varied | |
ny number of measurements to be fit | |
y array of measurements | |
dysq array of error in measurements, squared | |
(set dysq=NULL for unweighted least-squares) | |
func function to be fit | |
grad gradient of "func" with respect to the input parameters | |
fdata pointer to any additional data required by the function | |
lmstat pointer to the "status" structure, where minimization parameters | |
are set and the final status is returned. | |
Before calling levmarq, several of the parameters in lmstat must be set. | |
For default values, call levmarq_init(lmstat). | |
*/ | |
int levmarq(int npar, double *par, int ny, double *y, double *dysq, | |
double (*func)(double *, int, void *), | |
void (*grad)(double *, double *, int, void *), | |
void *fdata, LMstat *lmstat) | |
{ | |
int x,i,j,it,nit,ill,verbose; | |
double lambda,up,down,mult,weight,err,newerr,derr,target_derr; | |
double h[npar][npar],ch[npar][npar]; | |
double g[npar],d[npar],delta[npar],newpar[npar]; | |
verbose = lmstat->verbose; | |
nit = lmstat->max_it; | |
lambda = lmstat->init_lambda; | |
up = lmstat->up_factor; | |
down = 1/lmstat->down_factor; | |
target_derr = lmstat->target_derr; | |
weight = 1; | |
derr = newerr = 0; /* to avoid compiler warnings */ | |
/* calculate the initial error ("chi-squared") */ | |
err = error_func(par, ny, y, dysq, func, fdata); | |
/* main iteration */ | |
for (it=0; it<nit; it++) { | |
/* calculate the approximation to the Hessian and the "derivative" d */ | |
for (i=0; i<npar; i++) { | |
d[i] = 0; | |
for (j=0; j<=i; j++) | |
h[i][j] = 0; | |
} | |
for (x=0; x<ny; x++) { | |
if (dysq) weight = 1/dysq[x]; /* for weighted least-squares */ | |
grad(g, par, x, fdata); | |
for (i=0; i<npar; i++) { | |
d[i] += (y[x] - func(par, x, fdata))*g[i]*weight; | |
for (j=0; j<=i; j++) | |
h[i][j] += g[i]*g[j]*weight; | |
} | |
} | |
/* make a step "delta." If the step is rejected, increase | |
lambda and try again */ | |
mult = 1 + lambda; | |
ill = 1; /* ill-conditioned? */ | |
while (ill && (it<nit)) { | |
for (i=0; i<npar; i++) | |
h[i][i] = h[i][i]*mult; | |
ill = cholesky_decomp(npar, ch, h); | |
if (!ill) { | |
solve_axb_cholesky(npar, ch, delta, d); | |
for (i=0; i<npar; i++) | |
newpar[i] = par[i] + delta[i]; | |
newerr = error_func(newpar, ny, y, dysq, func, fdata); | |
derr = newerr - err; | |
ill = (derr > 0); | |
} | |
if (verbose) printf("it = %4d, lambda = %10g, err = %10g, " | |
"derr = %10g\n", it, lambda, err, derr); | |
if (ill) { | |
mult = (1 + lambda*up)/(1 + lambda); | |
lambda *= up; | |
it++; | |
} | |
} | |
for (i=0; i<npar; i++) | |
par[i] = newpar[i]; | |
err = newerr; | |
lambda *= down; | |
if ((!ill)&&(-derr<target_derr)) break; | |
} | |
lmstat->final_it = it; | |
lmstat->final_err = err; | |
lmstat->final_derr = derr; | |
return (it==nit); | |
} | |
/* calculate the error function (chi-squared) */ | |
double error_func(double *par, int ny, double *y, double *dysq, | |
double (*func)(double *, int, void *), void *fdata) | |
{ | |
int x; | |
double res,e=0; | |
for (x=0; x<ny; x++) { | |
res = func(par, x, fdata) - y[x]; | |
if (dysq) /* weighted least-squares */ | |
e += res*res/dysq[x]; | |
else | |
e += res*res; | |
} | |
return e; | |
} | |
/* solve the equation Ax=b for a symmetric positive-definite matrix A, | |
using the Cholesky decomposition A=LL^T. The matrix L is passed in "l". | |
Elements above the diagonal are ignored. | |
*/ | |
void solve_axb_cholesky(int n, double l[n][n], double x[n], double b[n]) | |
{ | |
int i,j; | |
double sum; | |
/* solve L*y = b for y (where x[] is used to store y) */ | |
for (i=0; i<n; i++) { | |
sum = 0; | |
for (j=0; j<i; j++) | |
sum += l[i][j] * x[j]; | |
x[i] = (b[i] - sum)/l[i][i]; | |
} | |
/* solve L^T*x = y for x (where x[] is used to store both y and x) */ | |
for (i=n-1; i>=0; i--) { | |
sum = 0; | |
for (j=i+1; j<n; j++) | |
sum += l[j][i] * x[j]; | |
x[i] = (x[i] - sum)/l[i][i]; | |
} | |
} | |
/* This function takes a symmetric, positive-definite matrix "a" and returns | |
its (lower-triangular) Cholesky factor in "l". Elements above the | |
diagonal are neither used nor modified. The same array may be passed | |
as both l and a, in which case the decomposition is performed in place. | |
*/ | |
int cholesky_decomp(int n, double l[n][n], double a[n][n]) | |
{ | |
int i,j,k; | |
double sum; | |
for (i=0; i<n; i++) { | |
for (j=0; j<i; j++) { | |
sum = 0; | |
for (k=0; k<j; k++) | |
sum += l[i][k] * l[j][k]; | |
l[i][j] = (a[i][j] - sum)/l[j][j]; | |
} | |
sum = 0; | |
for (k=0; k<i; k++) | |
sum += l[i][k] * l[i][k]; | |
sum = a[i][i] - sum; | |
if (sum<TOL) return 1; /* not positive-definite */ | |
l[i][i] = sqrt(sum); | |
} | |
return 0; | |
} |
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typedef struct { | |
int verbose; | |
int max_it; | |
double init_lambda; | |
double up_factor; | |
double down_factor; | |
double target_derr; | |
int final_it; | |
double final_err; | |
double final_derr; | |
} LMstat; | |
void levmarq_init(LMstat *lmstat); | |
int levmarq(int npar, double *par, int ny, double *y, double *dysq, | |
double (*func)(double *, int, void *), | |
void (*grad)(double *, double *, int, void *), | |
void *fdata, LMstat *lmstat); | |
double error_func(double *par, int ny, double *y, double *dysq, | |
double (*func)(double *, int, void *), void *fdata); | |
void solve_axb_cholesky(int n, double l[n][n], double x[n], double b[n]); | |
int cholesky_decomp(int n, double l[n][n], double a[n][n]); |
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levmarq.c, levmarq.h, and examples are provided under the MIT license. | |
Copyright (c) 2008-2016 Ron Babich | |
Permission is hereby granted, free of charge, to any person | |
obtaining a copy of this software and associated documentation | |
files (the "Software"), to deal in the Software without | |
restriction, including without limitation the rights to use, | |
copy, modify, merge, publish, distribute, sublicense, and/or sell | |
copies of the Software, and to permit persons to whom the | |
Software is furnished to do so, subject to the following | |
conditions: | |
The above copyright notice and this permission notice shall be | |
included in all copies or substantial portions of the Software. | |
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, | |
EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES | |
OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND | |
NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT | |
HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, | |
WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING | |
FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR | |
OTHER DEALINGS IN THE SOFTWARE. |
Could you add an example please?
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Any Swift version from this?