Faculty of Economic and Human Sciences, Sapientia, Hungarian University of Transylvania, Miercurea-Ciuc, Romania.
Evol Comput. 2012 Winter;20(4):609-39. doi: 10.1162/EVCO_a_00089. Epub 2012 Aug 31.
GLOBAL is a multi-start type stochastic method for bound constrained global optimization problems. Its goal is to find the best local minima that are potentially global. For this reason it involves a combination of sampling, clustering, and local search. The role of clustering is to reduce the number of local searches by forming groups of points around the local minimizers from a uniformly sampled domain and to start few local searches in each of those groups. We evaluate the performance of the GLOBAL algorithm on the BBOB 2009 noiseless testbed, containing problems which reflect the typical difficulties arising in real-world applications. The obtained results are also compared with those obtained form the simple multi-start procedure in order to analyze the effects of the applied clustering rule. An improved parameterization is introduced in the GLOBAL method and the performance of the new procedure is compared with the performance of the MATLAB GlobalSearch solver by using the BBOB 2010 test environment.
GLOBAL 是一种多起点随机方法,用于解决有界约束全局优化问题。它的目标是找到潜在的全局最优局部最小值。为此,它涉及到采样、聚类和局部搜索的组合。聚类的作用是通过在均匀采样的域周围形成局部最小化器周围的点的组,并在每个组中启动少量的局部搜索,从而减少局部搜索的次数。我们在 BBOB 2009 无噪声测试平台上评估了 GLOBAL 算法的性能,该平台包含反映真实世界应用中出现的典型困难的问题。所得结果还与简单的多起点程序进行了比较,以分析应用聚类规则的效果。在 GLOBAL 方法中引入了改进的参数化,并使用 BBOB 2010 测试环境比较了新程序和 MATLAB GlobalSearch 求解器的性能。