An Enhancement of the Bisection Method Average Performance Preserving Minmax Optimality

I. F. D. Oliveira, R. Takahashi
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引用次数: 19

Abstract

We identify a class of root-searching methods that surprisingly outperform the bisection method on the average performance while retaining minmax optimality. The improvement on the average applies for any continuous distributional hypothesis. We also pinpoint one specific method within the class and show that under mild initial conditions it can attain an order of convergence of up to 1.618, i.e., the same as the secant method. Hence, we attain both an improved average performance and an improved order of convergence with no cost on the minmax optimality of the bisection method. Numerical experiments show that, on regular functions, the proposed method requires a number of function evaluations similar to current state-of-the-art methods, about 24% to 37% of the evaluations required by the bisection procedure. In problems with non-regular functions, the proposed method performs significantly better than the state-of-the-art, requiring on average 82% of the total evaluations required for the bisection method, while the other methods were outperformed by bisection. In the worst case, while current state-of-the-art commercial solvers required two to three times the number of function evaluations of bisection, our proposed method remained within the minmax bounds of the bisection method.
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一种保持最小最大最优性的对分法平均性能的改进
我们确定了一类根搜索方法,它们在保持最小最大最优性的同时,在平均性能上惊人地优于二分法。对平均值的改进适用于任何连续分布假设。我们还指出了一类中的一个特定方法,并表明在温和的初始条件下,它可以获得高达1.618的收敛阶,即与割线方法相同。因此,我们获得了改进的平均性能和改进的收敛顺序,而没有代价的最小最大最优性的二分法。数值实验表明,对于正则函数,所提出的方法需要与当前最先进的方法相似的许多函数评估,约为对分法所需评估的24%至37%。在非正则函数问题中,该方法的性能明显优于最先进的方法,平均只需等分法所需总评估量的82%,而其他方法的性能都优于等分法。在最坏的情况下,虽然目前最先进的商业求解器需要两到三倍的对分函数评估次数,但我们提出的方法仍然在对分方法的最小最大值范围内。
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