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Optimization of High-Dimensional Functions through Hypercube Evaluation

机译:通过超立方体评估优化高维函数

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摘要

A novel learning algorithm for solving global numerical optimization problems is proposed. The proposed learning algorithm is intense stochastic search method which is based on evaluation and optimization of a hypercube and is called the hypercube optimization (HO) algorithm. The HO algorithm comprises the initialization and evaluation process, displacement-shrink process, and searching space process. The initialization and evaluation process initializes initial solution and evaluates the solutions in given hypercube. The displacement-shrink process determines displacement and evaluates objective functions using new points, and the search area process determines next hypercube using certain rules and evaluates the new solutions. The algorithms for these processes have been designed and presented in the paper. The designed HO algorithm is tested on specific benchmark functions. The simulations of HO algorithm have been performed for optimization of functions of 1000-, 5000-, or even 10000 dimensions. The comparative simulation results with other approaches demonstrate that the proposed algorithm is a potential candidate for optimization of both low and high dimensional functions.
机译:提出了一种求解全局数值优化问题的新型学习算法。提出的学习算法是一种基于超立方体的评估和优化的密集随机搜索方法,称为超立方体优化(HO)算法。 HO算法包括初始化和评估过程,位移收缩过程以及搜索空间过程。初始化和评估过程初始化初始解,并评估给定超立方体中的解。位移收缩过程确定位移并使用新点评估目标函数,搜索区域过程使用某些规则确定下一个超立方体并评估新解。本文设计并介绍了这些过程的算法。设计的HO算法在特定基准功能上进行了测试。已经执行了HO算法的仿真以优化1000、5000,甚至10000维的功能。与其他方法的比较仿真结果表明,该算法是优化低维和高维函数的潜在候选者。

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