Random Ensemble MARS: Model Selection in Multivariate Adaptive Regression Splines Using Random Forest Approach

Dilek Sabancı, M. Cengiz
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引用次数: 3

Abstract

Multivariate Adaptive Regression Splines (MARS) is a supervised learning model in machine learning, not obtained by an ensemble learning method. Ensemble learning methods are gathered from samples comprising hundreds or thousands of learners that serve the common purpose of improving the stability and accuracy of machine learning algorithms. This study presented REMARS (Random Ensemble MARS), a new MARS model selection approach obtained using the Random Forest (RF) algorithm. 200 training and test data set generated via the Bagging method were analysed in the MARS analysis engine. At the end of the analysis, two different MARS model sets were created, one yielding the smallest Mean Square Error for the test data (Test MSE) and the other yielding the smallest Generalised Cross-Validation (GCV) value. The best model was estimated for both Test MSE and GCV criteria by examining the error of measurement criteria, variable importance averages, and frequencies of the knot values for each model. Eventually, a new model was obtained via the ensemble learning method, i.e., REMARS, that yields result as good as the MARS model obtained from the original data set. The MARS model, which works better in the larger data set, provides more reliable results with smaller data sets utilising the proposed method.
随机集成MARS:基于随机森林方法的多元自适应回归样条的模型选择
多元自适应回归样条是机器学习中的一种监督学习模型,不是通过集成学习方法获得的。集成学习方法是从包含数百或数千个学习者的样本中收集的,这些学习者服务于提高机器学习算法的稳定性和准确性的共同目的。本文提出了一种基于随机森林(Random Forest, RF)算法的新型火星模型选择方法——随机集合火星(Random Ensemble MARS)。通过Bagging方法生成的200个训练和测试数据集在MARS分析引擎中进行了分析。在分析结束时,创建了两个不同的MARS模型集,一个产生最小的测试数据均方误差(test MSE),另一个产生最小的广义交叉验证(GCV)值。通过检查测量标准的误差、变量重要性平均值和每个模型的结值的频率,估计了测试MSE和GCV标准的最佳模型。最终,通过集成学习方法得到一个新的模型,即REMARS,其结果与从原始数据集得到的MARS模型一样好。MARS模型在更大的数据集上工作得更好,利用所提出的方法在更小的数据集上提供更可靠的结果。
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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