A conjugate gradient method with descent direction for unconstrained optimization
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摘要
A modified conjugate gradient method is presented for solving unconstrained optimization problems, which possesses the following properties: (i) The sufficient descent property is satisfied without any line search; (ii) The search direction will be in a trust region automatically; (iii) The Zoutendijk condition holds for the Wolfe–Powell line search technique; (iv) This method inherits an important property of the well-known Polak–Ribière–Polyak (PRP) method: the tendency to turn towards the steepest descent direction if a small step is generated away from the solution, preventing a sequence of tiny steps from happening. The global convergence and the linearly convergent rate of the given method are established. Numerical results show that this method is interesting.
论文关键词:65K05,Search direction,Line search,Conjugate gradient method,Global convergence,Unconstrained optimization
论文评审过程:Received 3 December 2006, Revised 13 March 2009, Available online 5 August 2009.
论文官网地址:https://doi.org/10.1016/j.cam.2009.08.001