CONJUGATE gradient methods, APPROXIMATION theory, CONSTRAINED optimization, MATHEMATICAL optimization, LINEAR differential equations, LINEAR systems, NUMERICAL analysis, STOCHASTIC convergence, ALGORITHMS
Abstract
This paper proposes a line search technique to satisfy a relaxed form of the strong Wolfe conditions in order to guarantee the descent condition at each iteration of the Polak-Ribière-Polyak conjugate gradient algorithm. It is proved that this line search algorithm preserves the usual convergence properties of any descent algorithm. In particular, it is shown that the Zoutendijk condition holds under mild assumptions. It is also proved that the resulting conjugate gradient algorithm is convergent under a strong convexity assumption. For the nonconvex case, a globally convergent modification is proposed. Numerical tests are presented. [ABSTRACT FROM AUTHOR]