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How Grossone Can Be Helpful to Iteratively Compute Negative Curvature Directions

机译:Grossone如何有助于迭代地计算负曲率方向

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We consider an iterative computation of negative curvature directions, in large scale optimization frameworks. We show that to the latter purpose, borrowing the ideas in [1,3] and [4], we can fruitfully pair the Conjugate Gradient (CG) method with a recently introduced numerical approach involving the use of grossone [5]. In particular, though in principle the CG method is well-posed only on positive definite linear systems, the use of grossone can enhance the performance of the CG, allowing the computation of negative curvature directions, too. The overall method in our proposal significantly generalizes the theory proposed for [1] and [3], and straightforwardly allows the use of a CG-based method on indefinite Newton's equations.
机译:我们考虑在大规模优化框架中进行负曲率方向的迭代计算。我们展示了后者的目的,借用[1,3]和[4]中的想法,我们可以用最近引入的数值方法效果效果果实地对涉及使用Grossone [5]的数控方法。特别是,尽管原则上CG方法仅在正定的线性系统上良好地提出,但是使用Grossone可以增强CG的性能,允许计算负曲率方向。我们提案中的整体方法显着推广了[1]和[3]所提出的理论,并直接允许在不定的牛顿方程上使用基于CG的方法。

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