论文标题

优化算法的最佳收敛参数

Parameters for the best convergence of an optimization algorithm On-The-Fly

论文作者

Pieter, Valdimir

论文摘要

真正引起我的兴趣的是,即使客观公式没有显着差异,某些参数如何在执行和优化算法融合方面更好地发挥作用。因此,研究问题指出:“哪些参数使用fly方法为客观公式提供了最佳的最佳收敛解决方案?”这项研究是在实验概念中进行的,在一个实验概念中,对五种不同的目标功能进行了测试,以发现哪些参数可以很好地产生最佳收敛性。要找到正确的参数,应用了一种称为“ fly”的方法。我使用五种不同的优化算法运行实验。测试运行之一表明,每个参数的收敛精度提高或降低,具体取决于您选择的特定优化算法。每个参数具有提高或降低主观函数的收敛精度。仅使用重组技术应用进化算法的结果之一在找到最佳优化方面做得很好。而且,通过梳理突变或一个测试性能中的几个参数,某些结果具有越来越高的精度可视化。总之,每种算法都有其自身的参数集,该参数的收敛方式不同。还取决于所使用的目标公式。这证实了飞行方法是找到最佳参数的合适方法。这意味着操纵并观察过程中找到正确参数的效果,只要学习成本率随着时间的推移而下降。

What really sparked my interest was how certain parameters worked better at executing and optimization algorithm convergence even though the objective formula had no significant differences. Thus the research question stated: 'Which parameters provides an upmost optimal convergence solution of an Objective formula using the on-the-fly method?' This research was done in an experimental concept in which five different algorithms were tested with different objective functions to discover which parameter would result well for the best convergence. To find the correct parameter a method called 'on-the-fly' was applied. I run the experiments with five different optimization algorithms. One of the test runs showed that each parameter has an increasing or decreasing convergence accuracy towards the subjective function depending on which specific optimization algorithm you choose. Each parameter has an increasing or decreasing convergence accuracy toward the subjective function. One of the results in which evolutionary algorithm was applied with only the recombination technique did well at finding the best optimization. As well that some results have an increasing accuracy visualization by combing mutation or several parameters in one test performance. In conclusion, each algorithm has its own set of the parameter that converge differently. Also depending on the target formula that is used. This confirms that the fly method a suitable approach at finding the best parameter. This means manipulations and observe the effects in process to find the right parameter works as long as the learning cost rate decreases over time.

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