A regularized limited memory BFGS method for nonconvex unconstrained minimization

被引:0
|
作者
Tao-Wen Liu
机构
[1] Hunan University,College of Mathematics and Econometrics
来源
Numerical Algorithms | 2014年 / 65卷
关键词
Unconstrained optimization; Limited memory BFGS method; Regularization strategy; Global convergence; 65K05; 65K10;
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摘要
The limited memory BFGS method (L-BFGS) is an adaptation of the BFGS method for large-scale unconstrained optimization. However, The L-BFGS method need not converge for nonconvex objective functions and it is inefficient on highly ill-conditioned problems. In this paper, we proposed a regularization strategy on the L-BFGS method, where the used regularization parameter may play a compensation role in some sense when the condition number of Hessian approximation tends to become ill-conditioned. Then we proposed a regularized L-BFGS method and established its global convergence even when the objective function is nonconvex. Numerical results show that the proposed method is efficient.
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页码:305 / 323
页数:18
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