使用矩形平分和新颖采样方案的对角线分割策略

Mendel Pub Date : 2023-12-20 DOI:10.13164/mendel.2023.2.131
Nabila Guessoum, L. Chiter
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引用次数: 1

摘要

在本文中,我们考虑了一个全局优化问题,该问题的目标函数被假定为具有未知 Lipschitz 常量的 Lipschitz 连续函数。在最近推出的 BIRECT(BIsection of RECTangles)算法的基础上,我们提出了一种新的对角线分割和采样方案。我们的框架被命名为 BIRECT-V(V 代表顶点),它将对角分割与两点采样相结合。在初始超矩形中,这两个点分别位于主对角线的 1/3 和 1 处。与大多数 DIRECT 类型算法不同的是,在顶点处评估目标函数并不适合采用分段法,而我们的策略与分段法相结合,能提供更全面的目标函数信息。然而,新采样点的创建可能会与共享顶点上的现有采样点重合,从而导致目标函数的额外评估,增加每次迭代的函数评估次数。为了解决这个问题,我们建议修改原始优化域,以获得全局解决方案的良好近似值。实验研究表明,这种修改对 BIRECT-V 算法的性能产生了积极影响。在一组测试问题上,与原始 BIRECT 算法和两种流行的 DIRECT 类型算法相比,我们的建议显示了全局优化算法的前景。它在高维问题上的表现尤为突出
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Diagonal Partitioning Strategy Using Bisection of Rectangles and a Novel Sampling Scheme
In this paper, we consider a global optimization problem where the objective function is assumed to be Lipschitz-continuous with an unknown Lipschitz constant. Building upon the recently introduced BIRECT (BIsection of RECTangles) algorithm, we propose a new diagonal partitioning and sampling scheme. Our framework, named BIRECT-V (V for vertices), combines bisection with the sampling of two points. In the initial hyper-rectangle, these points are located at 1/3 and 1 along the main diagonal. Unlike most DIRECT-type algorithms, where evaluating the objective function at vertices is not suitable for bisection, our strategy, when combined with bisection, provides more comprehensive information about the objective function. However, the creation of new sampling points may coincide with existing ones at shared vertices, resulting in additional evaluations of the objective function and increasing the number of function evaluations per iteration. To overcome this issue, we propose modifying the original optimization domain to obtain a good approximation of the global solution. Experimental investigations demonstrate that this modification positively impacts the performance of the BIRECT-V algorithm. Our proposal shows promise as a global optimization algorithm compared to the original BIRECT and two popular DIRECT-type algorithms on a set of test problems. It particularly excels at high-dimensional problems
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来源期刊
Mendel
Mendel Decision Sciences-Decision Sciences (miscellaneous)
CiteScore
2.20
自引率
0.00%
发文量
7
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