Resource allocation between initialization and optimization under computational expensive environment

Yi Sun, V. Li
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引用次数: 1

Abstract

Initialization techniques are normally considered as “resource-free” and their computational complexities are seldom addressed. Since many techniques require objective function evaluations to generate initial solutions, this “resource-free” assumption is invalid under computational expensive environment. In this paper, we propose an Computational Resource Optimization Problem (CROP) between initialization and optimization under such environment. We provide a comparison metric among different initialization techniques. Four popular initialization techniques, namely, Pseudo Random Number Generator (PRNG), Opposition-based Learning (OBL), Quasi-Opposition-based Learning (QOBL) and Quadratic Interpolation (QI) are studied. Differential Evolution (DE) is used as the underlying optimization technique, while Chemical Reaction Optimization (CRO) is used to solve CROP. The CEC2014 computational expensive problem set is used as test cases. Our results show the importance of considering resource allocation between initialization and optimization in computational expensive environment.
计算昂贵环境下初始化与优化之间的资源分配
初始化技术通常被认为是“无资源的”,它们的计算复杂性很少得到解决。由于许多技术需要目标函数评估来生成初始解,这种“无资源”的假设在计算昂贵的环境下是无效的。本文提出了在这种环境下初始化与优化之间的计算资源优化问题(CROP)。我们提供了不同初始化技术之间的比较度量。研究了四种常用的初始化技术,即伪随机数生成器(PRNG)、基于对立的学习(OBL)、准基于对立的学习(QOBL)和二次插值(QI)。采用差分进化(DE)作为底层优化技术,采用化学反应优化(CRO)求解CROP。使用CEC2014计算昂贵问题集作为测试用例。结果表明,在计算量大的环境下,考虑初始化和优化之间资源分配的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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