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首页> 外文期刊>Journal of Computational and Applied Mathematics >New accelerated conjugate gradient algorithms as a modification of DaiYuan's computational scheme for unconstrained optimization
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New accelerated conjugate gradient algorithms as a modification of DaiYuan's computational scheme for unconstrained optimization

机译:新的加速共轭梯度算法,是对戴元计算方案的无约束优化的改进

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New accelerated nonlinear conjugate gradient algorithms which are mainly modifications of Dai and Yuan's for unconstrained optimization are proposed. Using the exact line search, the algorithm reduces to the Dai and Yuan conjugate gradient computational scheme. For inexact line search the algorithm satisfies the sufficient descent condition. Since the step lengths in conjugate gradient algorithms may differ from 1 by two orders of magnitude and tend to vary in a very unpredictable manner, the algorithms are equipped with an acceleration scheme able to improve the efficiency of the algorithms. Computational results for a set consisting of 750 unconstrained optimization test problems show that these new conjugate gradient algorithms substantially outperform the DaiYuan conjugate gradient algorithm and its hybrid variants, HestenesStiefel, PolakRibirePolyak, CONMIN conjugate gradient algorithms, limited quasi-Newton algorithm LBFGS and compare favorably with CGDESCENT. In the frame of this numerical study the accelerated scaled memoryless BFGS preconditioned conjugate gradient ASCALCG algorithm proved to be more robust.
机译:提出了新的加速非线性共轭梯度算法,该算法主要是对Dai和Yuan算法的无约束优化。使用精确线搜索,该算法简化为Dai和Yuan共轭梯度计算方案。对于不精确的线搜索,该算法满足足够的下降条件。由于共轭梯度算法中的步长可能与1相差两个数量级,并且趋于以非常不可预测的方式变化,因此这些算法配备了能够提高算法效率的加速方案。由750个无约束优化测试问题组成的集合的计算结果表明,这些新的共轭梯度算法明显优于DaiYuan共轭梯度算法及其混合变体HestenesStiefel,PolakRibirePolyak,CONMIN共轭梯度算法,有限拟牛顿算法LBFGS,并且与CGDESCENT。在此数值研究的框架内,事实证明,加速比例缩放无记忆BFGS预处理共轭梯度ASCALCG算法更为健壮。

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