PROC NLP solves
where is the objective function and the
’s are the constraint functions.
A point is feasible if it satisfies all the constraints.
The feasible region
is the set of all the feasible points.
A feasible point
is a global solution of the preceding problem if no point in
has a smaller function value than
).
A feasible point
is a local solution of the problem if there exists some open neighborhood surrounding
in that no point has a smaller function value than
).
Nonlinear programming algorithms cannot consistently find global minima. All the algorithms in PROC NLP find a local minimum
for this problem. If you need to check whether the obtained solution is a global minimum, you may have to run PROC NLP with
different starting points obtained either at random or by selecting a point on a grid that contains
.
Every local minimizer of this problem satisfies the following local optimality conditions:
The gradient (vector of first derivatives) of the objective function
(projected toward the feasible region if the problem is constrained) at the point
is zero.
The Hessian (matrix of second derivatives) of the objective function
(projected toward the feasible region
in the constrained case) at the point
is positive definite.
Most of the optimization algorithms in PROC NLP use iterative techniques that result in a sequence of points , that converges to a local solution
. At the solution, PROC NLP performs tests to confirm that the (projected) gradient is close to zero and that the (projected)
Hessian matrix is positive definite.
An important tool in the analysis and design of algorithms in constrained optimization is the Lagrangian function, a linear combination of the objective function and the constraints:
The coefficients are called Lagrange multipliers.
This tool makes it possible to state necessary and sufficient conditions for a local minimum. The various algorithms in PROC
NLP create sequences of points, each of which is closer than the previous one to satisfying these conditions.
Assuming that the functions and
are twice continuously differentiable, the point
is a local minimum of the nonlinear programming problem, if there exists a vector
that meets the following conditions.
1. First-order Karush-Kuhn-Tucker conditions:
2. Second-order conditions:
Each nonzero vector that satisfies
also satisfies
Most of the algorithms to solve this problem attempt to find a combination of vectors and
for which the gradient of the Lagrangian function with respect to
is zero.
The first- and second-order conditions of optimality are based on first and second derivatives of the objective function and the constraints
.
The gradient vector contains the first derivatives of the objective function with respect to the parameters
as follows:
The symmetric Hessian matrix contains the second derivatives of the objective function
with respect to the parameters
as follows:
For least squares problems, the Jacobian matrix
contains the first-order derivatives of the
objective functions
with respect to the parameters
as follows:
In the case of least squares problems, the crossproduct Jacobian
is used as an approximate Hessian matrix. It is a very good approximation of the Hessian if the residuals at the solution
are “small.” (If the residuals are not sufficiently small at the solution, this approach may result in slow convergence.) The fact that
it is possible to obtain Hessian approximations for this problem that do not require any computation of second derivatives
means that least squares algorithms are more efficient than unconstrained optimization algorithms. Using the vector of function values, PROC NLP computes the gradient
by
The Jacobian matrix contains the first-order derivatives of the
nonlinear constraint functions
, with respect to the parameters
, as follows:
PROC NLP provides three ways to compute derivatives:
It computes analytical first- and second-order derivatives of the objective function with respect to the
variables
.
It computes first- and second-order finite-difference approximations to the derivatives. For more information, see the section Finite-Difference Approximations of Derivatives.
The user supplies formulas for analytical or numerical first- and second-order derivatives of the objective function in the GRADIENT, JACOBIAN, CRPJAC, and HESSIAN statements. The JACNLC statement can be used to specify the derivatives for the nonlinear constraints.