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首页> 外文期刊>Journal of Experimental and Theoretical Artificial Intelligence >Investigating the effect of training–testing data stratification onrnthe performance of soft computing techniques: an experimentalrnstudy
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Investigating the effect of training–testing data stratification onrnthe performance of soft computing techniques: an experimentalrnstudy

机译:研究训练测试数据分层对软计算技术性能的影响:一项实验研究

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摘要

Cross-validation of soft computing techniques needs to be done efficiently to avoid overfitting and underfitting. This is more important in petroleum reservoir characterisation applications where the often-limited training and testing data subsets represent Wells with known and unknown target properties, respectively. Existing data stratification strategies have been haphazardly chosen without any experimental basis. In this study, the optimal training-testing stratification proportions have been rigorously investigated using the prediction of porosity and permeability of petroleum reservoirs as an experimental case. The comparative performances of seven traditional and advanced machine learning techniques were considered. The overall results suggested a recommendable optimum training stratification that could serve as a good reference for researchers in similar applications.
机译:软计算技术的交叉验证需要有效完成,以避免过拟合和欠拟合。这在石油储层表征应用中尤为重要,在该应用中,经常受限的训练和测试数据子集分别代表具有已知和未知目标属性的油井。在没有任何实验依据的情况下随意选择了现有的数据分层策略。在这项研究中,以石油储层的孔隙度和渗透率预测为实验案例,对最佳的训练试验分层比例进行了严格的研究。考虑了七种传统和高级机器学习技术的比较性能。总体结果表明,建议进行最佳培训分层,这可以为类似应用中的研究人员提供良好的参考。

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