Newton-Type Minimization via the Lanczos Method 论文

1984SIAM Journal on Numerical Analysis引用 342
Matrix Theory and AlgorithmsAdvanced Optimization Algorithms ResearchSparse and Compressive Sensing Techniques

摘要

This paper discusses the use of the linear conjugate-gradient method (developed via the Lanczos method) in the solution of large-scale unconstrained minimization problems. At each iteration of a Newton-type method, the direction of search is defined as the solution of a quadratic subproblem. When the number of variables is very large, this subproblem may be solved using the linear conjugate-gradient method of Hestenes and Stiefel. We show how the equivalent Lanczos characterization of the linear conjugate-gradient method may be exploited to define a modified Newton method which can be applied to problems that do not necessarily have positive-definite Hessian matrices at all points of the region of interest. This derivation also makes it possible to compute a negative-curvature direction at a stationary point. The idea of a truncated Newton method is to perform only a limited number of iterations of the quadratic subproblem. This effectively gives a search direction that interpolates between the steepest-descent direction and the Newton direction. We describe a preconditioned linear conjugate-gradient method that defines a search direction which interpolates between the direction defined by a nonlinear conjugate-gradient-type algorithm and a modified Newton direction.