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Applying correlation to enhance boosting technique using genetic programming as base learner

机译:应用相关性以遗传编程为基础学习器来增强增强技术

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摘要

This paper explores the Genetic Programming and Boosting technique to obtain an ensemble of regressors and proposes a new formula for the updating of weights, as well as for the final hypothesis. Differently from studies found in the literature, in this paper we investigate the use of the correlation metric as an additional factor for the error metric. This new approach, called Boosting using Correlation Coefficients (BCC) has been empirically obtained after trying to improve the results of the other methods. To validate this method, we conducted two groups of experiments. In the first group, we explore the BCC for time series forecasting, in academic series and in a widespread Monte Carlo simulation covering the entire ARMA spectrum. The Genetic Programming (GP) is used as a base learner and the mean squared error (MSE) has been used to compare the accuracy of the proposed method against the results obtained by GP, GP using traditional boosting and the traditional statistical methodology (ARMA). The second group of experiments aims at evaluating the proposed method on multivariate regression problems by choosing Cart (Classification and Regression Tree) as the base learner.
机译:本文探索了遗传规划和Boosting技术来获得回归器的整体,并提出了用于权重更新以及最终假设的新公式。与文献中的研究不同,在本文中,我们研究了使用相关度量作为误差度量的附加因素。在尝试改善其他方法的结果之后,已通过经验获得了这种称为“使用相关系数增强(BCC)的方法”的新方法。为了验证该方法,我们进行了两组实验。在第一组中,我们将探讨BCC,以进行时间序列预测,进行学术系列研究并在涵盖整个ARMA频谱的广泛蒙特卡洛模拟中进行探索。遗传规划(GP)被用作基础学习者,均方误差(MSE)已被用于将提出的方法的准确性与GP,GP使用传统的Boosting和传统的统计方法(ARMA)获得的结果进行比较。第二组实验旨在通过选择Cart(分类和回归树)作为基础学习者,对所提出的多元回归问题的方法进行评估。

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