Self-Scaling Variable Metric (SSVM) Algorithms

Part I: Criteria and Sufficient Conditions for Scaling a Class of Algorithms
Published Online:https://doi.org/10.1287/mnsc.20.5.845

A new criterion is introduced for comparing the convergence properties of variable metric algorithms, focusing on stepwise descent properties. This criterion is a bound on the rate of decrease in the function value at each iterative step (single-step convergence rate). Using this criterion as a basis for algorithm development leads to the introduction of variable coefficients to rescale the objective function at each iteration, and, correspondingly, to a new class of variable metric algorithms.

Effective scaling can be implemented by restricting the parameters in a two-parameter family of variable metric algorithms. Conditions are derived for these parameters that guarantee monotonic improvement in the single-step convergence rate. These conditions are obtained by analyzing the eigenvalue structure of the associated inverse Hessian approximations.

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