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首页> 外文期刊>Analytica chimica acta >Variable interaction network based variable selection for multivariate calibration
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Variable interaction network based variable selection for multivariate calibration

机译:基于变量交互网络的变量选择用于多元校准

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摘要

Multivariate calibration problems often involve the identification of a meaningful subset of variables,from a vast number of variables for better prediction of output variables.A new graph theoretic method based on partial correlations (variable interaction network-VTN) is proposed.Many well studied representative calibration datasets spanning different application domains are selected for investigating the performance.Partial least squares (PLS) regression models combined with variable selection techniques are employed for benchmarking the performance.Subsets of variables with different number of variables are retained for the final analysis after VTN selection and progressive prediction accuracies are used for comparison.VTN-PLS results show significant improvement in prediction efficiencies and variable subset optimization.Improvement of up to 45% over existing methods with significantly fewer variables is achieved using the new method.Advantages of VTN based variable selection are highlighted.
机译:多变量校准问题通常涉及从大量变量中识别有意义的变量子集以更好地预测输出变量。提出了一种基于偏相关的新的图论方法(变量交互网络-VTN)。选择跨不同应用领域的校准数据集来研究性能。采用偏最小二乘(PLS)回归模型结合变量选择技术来对性能进行基准测试。选择VTN后保留具有不同数量变量的变量子集以进行最终分析VTN-PLS结果显示了预测效率和变量子集优化的显着提高。使用新方法实现了比现有方法提高多达45%的变量,基于VTN的变量选择的优势是 突出显示。

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