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Global convergence rate analysis of unconstrained optimization methods based on probabilistic models

机译:基于概率模型的无约束优化方法的全局收敛速率分析

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摘要

We present global convergence rates for a line-search method which is based on random first-order models and directions whose quality is ensured only with certain probability. We show that in terms of the order of the accuracy, the evaluation complexity of such a method is the same as its counterparts that use deterministic accurate models; the use of probabilistic models only increases the complexity by a constant, which depends on the probability of the models being good. We particularize and improve these results in the convex and strongly convex case. We also analyze a probabilistic cubic regularization variant that allows approximate probabilistic second-order models and show improved complexity bounds compared to probabilistic first-order methods; again, as a function of the accuracy, the probabilistic cubic regularization bounds are of the same (optimal) order as for the deterministic case.
机译:我们为线路搜索方法提供了全局融合率,该方法基于随机的一阶模型和方向,其质量仅具有某些概率。 我们表明,就准确性的顺序而言,这种方法的评估复杂性与使用确定性准确模型的对应物相同; 概率模型的使用仅通过常数增加复杂性,这取决于模型的概率很好。 我们在凸起和强凸的情况下统治和改善了这些结果。 我们还分析了概率立方正则化变体,其允许近似概率二阶模型,并与概率一阶方法相比,提高了复杂性界限; 同样,作为准确性的函数,概率立方正则化界与确定性情况相同(最佳)顺序。

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