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Multiobjective Firefly Algorithm for Variable Selection in Multivariate Calibration

机译:多元标定中用于变量选择的多目标萤火虫算法

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Firefly Algorithm is a newly proposed method with potential application on several real world problems, such as variable selection problem. This paper presents a Multiobjective Firefly Algorithm (MOFA) for variable selection in multivariate calibration models. The main objective is to propose an optimization to reduce the error value prediction of the property of interest, as well as reducing the number of variables selected. Based on the results obtained, it is possible to demonstrate that our proposal may be a viable alternative in order to deal with conflicting objective-functions. Additionally, we compare MOFA with traditional algorithms for variable selection and show that it is a more relevant contribution for the variable selection problem.
机译:Firefly算法是一种新提出的方法,在一些现实世界的问题(例如变量选择问题)上具有潜在的应用前景。本文提出了一种用于多变量校准模型中变量选择的多目标萤火虫算法(MOFA)。主要目的是提出一种优化方法,以减少对所关注属性的误差值的预测,并减少所选变量的数量。根据获得的结果,有可能证明我们的建议可能是可行的替代方案,以便处理相互矛盾的目标函数。此外,我们将MOFA与传统的变量选择算法进行了比较,结果表明,它对变量选择问题的贡献更大。

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