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Near-infrared spectrum discriminant analysis based on information extraction by using the elastic net

机译:基于弹性网信息提取的近红外光谱判别分析

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Elastic net method combines the merits of ridge regression and Lasso method. It reduces model prediction error by variable selection while not over-shrinking regression coefficients. In this paper, we take advantages of the elastic net's good properties of variable selection and simultaneous parameter estimation to select the important principal components, then establish discriminant model and apply it to near-infrared spectroscopy quantitative analysis. In the real data set analysis, 103 rhubarb samples were randomly split into two groups, one is viewed as training set which contains 35 samples, another group is considered as testing set which contains 68 samples. All of the samples' protein contents are measured by the national standard Kjeldahl method and the data were called chemical values. In order to testify feasibility and stability of the method, the training set and testing set were conducted random split and analyzed for ten times, respectively. According to these predicting results, the maximum number of false positives was 10, the minimum number of false positives is 5, and average false positive rate is 11.76%. These results showed a significant improvement compared to the results which derived by using ordinary principal component method directly.
机译:弹性网法结合了岭回归和套索法的优点。它通过变量选择来减少模型预测误差,同时又不会过度缩小回归系数。本文利用弹性网的变量选择和同时参数估计的优良特性,选择重要的主成分,然后建立判别模型,并将其应用于近红外光谱定量分析中。在真实数据集分析中,将103个大黄样本随机分为两组,一组视为包含35个样本的训练集,另一组视为包含68个样本的测试集。所有样品的蛋白质含量均通过国家标准凯氏定氮法(Kjeldahl method)测量,数据称为化学值。为了证明该方法的可行性和稳定性,对训练集和测试集进行了随机分割,并分别进行了十次分析。根据这些预测结果,最大的假阳性数为10,最小的假阳性数为5,平均假阳性率为11.76%。与直接使用普通主成分法得出的结果相比,这些结果显示出显着的改进。

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