An efficient Tabu-search optimized regression for data-driven modeling

IF 1 4区 工程技术 Q4 MECHANICS
Chady Ghnatios , Ré-Mi Hage , Ilige Hage
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引用次数: 6

Abstract

In the past decade, data science became trendy and in-demand due to the necessity to capture, process, maintain, analyze and communicate data. Multiple regressions and artificial neural networks are both used for the analysis and handling of data. This work explores the use of meta-heuristic optimization to find optimal regression kernel for data fitting. It is shown that optimizing the regression kernel improve both the fitting and predictive ability of the regression. For instance, Tabu-search optimization is used to find the best least-squares regression kernel for different applications of buckling of straight columns and artificially generated data. Four independent parameters were used as input and a large pool of monomial search domain is initially considered. Different input parameters are also tested and the benefits of using of independent input parameters is shown.

一个有效的禁忌搜索优化回归数据驱动建模
在过去的十年中,由于需要捕获、处理、维护、分析和交流数据,数据科学变得时髦和需求。多元回归和人工神经网络都用于数据的分析和处理。这项工作探索了使用元启发式优化来寻找数据拟合的最佳回归核。结果表明,优化回归核可以提高回归的拟合能力和预测能力。例如,针对直柱屈曲和人工生成数据的不同应用,使用禁忌搜索优化来寻找最佳最小二乘回归核。采用4个独立参数作为输入,初步考虑了一个大的单项搜索域池。并对不同的输入参数进行了测试,说明了使用独立输入参数的好处。
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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来源期刊
Comptes Rendus Mecanique
Comptes Rendus Mecanique 物理-力学
CiteScore
1.40
自引率
0.00%
发文量
0
审稿时长
12 months
期刊介绍: The Comptes rendus - Mécanique cover all fields of the discipline: Logic, Combinatorics, Number Theory, Group Theory, Mathematical Analysis, (Partial) Differential Equations, Geometry, Topology, Dynamical systems, Mathematical Physics, Mathematical Problems in Mechanics, Signal Theory, Mathematical Economics, … The journal publishes original and high-quality research articles. These can be in either in English or in French, with an abstract in both languages. An abridged version of the main text in the second language may also be included.
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