NonLinearLeastSquare (3) - Linux Manuals

NonLinearLeastSquare: Non-linear least-square method.

NAME

QuantLib::NonLinearLeastSquare - Non-linear least-square method.

SYNOPSIS


#include <ql/math/optimization/leastsquare.hpp>

Public Member Functions


NonLinearLeastSquare (Constraint &c, Real accuracy=1e-4, Size maxiter=100)
Default constructor.
NonLinearLeastSquare (Constraint &c, Real accuracy, Size maxiter, boost::shared_ptr< OptimizationMethod > om)
Default constructor.
~NonLinearLeastSquare ()
Destructor.
Array & perform (LeastSquareProblem &lsProblem)
Solve least square problem using numerix solver.
void setInitialValue (const Array &initialValue)

Array & results ()
return the results
Real residualNorm ()
return the least square residual norm
Real lastValue ()
return last function value
Integer exitFlag ()
return exit flag
Integer iterationsNumber ()
return the performed number of iterations

Detailed Description

Non-linear least-square method.

Using a given optimization algorithm (default is conjugate gradient),

[ min r(x) : x in R^n ].PP where $ r(x) = |f(x)|^2 $ is the Euclidean norm of $ f(x) $ for some vector-valued function $ f $ from $ R^n $ to $ R^m $, [ f = (f_1, ..., f_m) ] with $ f_i(x) = b_i -
hi(x,t_i) $ where $ b $ is the vector of target data and $ phi $ is a scalar function.

Assuming the differentiability of $ f $, the gradient of $ r $ is defined by [ grad r(x) = f'(x)^t.f(x) ]

Author

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