On Trust Region Methods for Unconstrained Minimization without Derivatives 1
نویسنده
چکیده
We consider some algorithms for unconstrained minimization without derivatives that form linear or quadratic models by interpolation to values of the objective function. Then a new vector of variables is calculated by minimizing the current model within a trust region. Techniques are described for adjusting the trust region radius, and for choosing positions of the interpolation points that maintain not only nonsingularity of the interpolation equations but also the adequacy of the model. Particular attention is given to quadratic models with diagonal second derivative matrices, because numerical experiments show that they are often more eecient than full quadratic models for general objective functions. Finally, some recent research on the updating of full quadratic models is described brieey, using fewer interpolation equations than before. The resultant freedom is taken up by minimizing the Frobenius norm of the change to the second derivative matrix of the model. A preliminary version of this method provides some very promising numerical results.
منابع مشابه
On the convergence of trust region algorithms for unconstrained minimization without derivatives
We consider iterative trust region algorithms for the unconstrained minimization of an objective function F (x), x∈R, when F is differentiable but no derivatives are available, and when each model of F is a linear or a quadratic polynomial. The models interpolate F at n+1 points, which defines them uniquely when they are linear polynomials. In the quadratic case, second derivatives of the model...
متن کاملOn trust region methods for unconstrained minimization without derivatives
We consider some algorithms for unconstrained minimization without derivatives that form linear or quadratic models by interpolation to values of the objective function. Then a new vector of variables is calculated by minimizing the current model within a trust region. Techniques are described for adjusting the trust region radius, and for choosing positions of the interpolation points that mai...
متن کاملBeyond symmetric Broyden for updating quadratic models in minimization without derivatives
Some highly successful algorithms for unconstrained minimization without derivatives construct changes to the variables by applying trust region methods to quadratic approximations to the objective function F (x), x∈R. A quadratic model has (n+1)(n+2)/2 independent parameters, but each new model may interpolate only 2n+1 values of F , for instance. The symmetric Broyden method takes up the rema...
متن کاملDAMTP 2010/NA04 Beyond symmetric Broyden for updating quadratic models in minimization without derivatives
Some highly successful algorithms for unconstrained minimization without derivatives construct changes to the variables by applying trust region methods to quadratic approximations to the objective function F (x), x∈R. A quadratic model has (n+1)(n+2)/2 independent parameters, but each new model may interpolate only 2n+1 values of F , for instance. The symmetric Broyden method takes up the rema...
متن کاملA New Strategy for Choosing the Radius Adjusting Parameters in Trust Region Methods
Trust region methods are a class of important and efficient methods for solving unconstrained optimization problems. The efficiency of these methods strongly depends on the initial parameter, especially radius adjusting parameters. In this paper, we propose a new strategy for choosing the radius adjusting parameters. Numerical results from testing the new idea to solve a class of unconstrained ...
متن کامل