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Use of Machine Learning Algorithms to Predict Subgrade Resilient Modulus

机译:使用机器学习算法预测路基弹性模量

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Modern machine learning methods, such as tree ensembles, have recently become extremely popular due to their versatility and scalability in handling heterogeneous data and have been successfully applied across a wide range of domains. In this study, two widely applied tree ensemble methods, i.e., random forest (parallel ensemble) and gradient boosting (sequential ensemble), were investigated to predict resilient modulus, using routinely collected soil properties. Laboratory test data on sandy soils from nine borrow pits in Georgia were used for model training and testing. For comparison purposes, the two tree ensemble methods were evaluated against a regression tree model and a multiple linear regression model, demonstrating their superior performance. The results revealed that a single tree model generally suffers from high variance, while providing a similar performance to the traditional multiple linear regression model. By leveraging a collection of trees, both tree ensemble methods, Random Forest and eXtreme Gradient Boosting, significantly reduced variance and improved prediction accuracy, with the eXtreme Gradient Boosting being the best model, with an R~(2) of 0.95 on the test dataset.
机译:现代化的机器学习方法,如树合奏,最近由于它们在处理异构数据方面的多功能性和可扩展性而变得极其流行,并且已成功应用于各种域。在该研究中,使用常规收集的土壤性质,研究了两个广泛应用的树集合方法,即随机森林(并联集合)和梯度升压(顺序组合),以预测弹性模量。格鲁吉亚九个借款坑的沙土的实验室测试数据用于模型培训和测试。为了比较目的,评估两种树集合方法对回归树模型和多元线性回归模型进行评估,展示其卓越的性能。结果表明,单树模型通常遭受高方差,同时为传统的多元线性回归模型提供类似的性能。通过利用一系列树木,树集合方法,随机森林和极端梯度提升,显着降低的方差和改进的预测精度,极端渐变是最佳模型,在测试数据集中的R〜(2)为0.95 。

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