AbstractWe develop a framework employing scaling functions for the construction of multistep quasi-Newton methods for unconstrained optimization. These methods utilize values of the objective function. They are constructed via interpolants of the m+1 most recent iterates/gradient evaluations, and possess a free parameter which introduces an additional degree of flexibility. This permits the interpolating functions to assimilate information, in the form of function-values, which is readily available at each iteration. Motivated by previous experience [1] with the use of function-values in multistep methods, we investigate the incorporation of this information in the construction of the Hessian approximation at each iteration, in an attempt t...
AbstractIn previous work, the authors (1993, 1994) developed the concept of multi-step quasi-Newton ...
Multi-step methods derived in [1–3] have proven to be serious contenders in practice by outperformin...
AbstractMultistep quasi-Newton methods were introduced by Ford and Moghrabi [1]. They address the pr...
AbstractWe develop a framework employing scaling functions for the construction of multistep quasi-N...
We develop a framework (employing scaling functions) for the construction of multi-step quasi-Newton...
AbstractIn previous work, the authors (1993, 1994) developed the concept of multi-step quasi-Newton ...
AbstractBy the use of a nonlinear model for the gradient of the objective function along a chosen di...
AbstractQuasi-Newton methods update, at each iteration, the existing Hessian approximation (or its i...
AbstractWe consider multistep quasi-Newton methods for unconstrained optimization. These methods wer...
AbstractWe consider multi-step quasi-Newton methods for unconstrained optimization. These methods we...
AbstractA bound on the possible deterioration in the condition number of the inverse Hessian approxi...
AbstractMost “quasi-Newton” methods in common use for function minimisation use a quadratic model to...
AbstractWe consider multistep quasi-Newton methods for unconstrained optimization. These methods wer...
AbstractMulti-step quasi-Newton methods for optimisation (using data from more than one previous ste...
AbstractWe consider multi-step quasi-Newton methods for unconstrained optimization. These methods we...
AbstractIn previous work, the authors (1993, 1994) developed the concept of multi-step quasi-Newton ...
Multi-step methods derived in [1–3] have proven to be serious contenders in practice by outperformin...
AbstractMultistep quasi-Newton methods were introduced by Ford and Moghrabi [1]. They address the pr...
AbstractWe develop a framework employing scaling functions for the construction of multistep quasi-N...
We develop a framework (employing scaling functions) for the construction of multi-step quasi-Newton...
AbstractIn previous work, the authors (1993, 1994) developed the concept of multi-step quasi-Newton ...
AbstractBy the use of a nonlinear model for the gradient of the objective function along a chosen di...
AbstractQuasi-Newton methods update, at each iteration, the existing Hessian approximation (or its i...
AbstractWe consider multistep quasi-Newton methods for unconstrained optimization. These methods wer...
AbstractWe consider multi-step quasi-Newton methods for unconstrained optimization. These methods we...
AbstractA bound on the possible deterioration in the condition number of the inverse Hessian approxi...
AbstractMost “quasi-Newton” methods in common use for function minimisation use a quadratic model to...
AbstractWe consider multistep quasi-Newton methods for unconstrained optimization. These methods wer...
AbstractMulti-step quasi-Newton methods for optimisation (using data from more than one previous ste...
AbstractWe consider multi-step quasi-Newton methods for unconstrained optimization. These methods we...
AbstractIn previous work, the authors (1993, 1994) developed the concept of multi-step quasi-Newton ...
Multi-step methods derived in [1–3] have proven to be serious contenders in practice by outperformin...
AbstractMultistep quasi-Newton methods were introduced by Ford and Moghrabi [1]. They address the pr...