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Application of random forest regression to spectral multivariate calibration

机译:森林随机回归在光谱多元校正中的应用

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The performance of the random forest (RF) algorithm on the spectroscopic data was studied and compared by bootstrap aggregating of classification and regression trees (bagging CART), partial least squares (PLS) and nonlinear support vector machine (SVM) algorithms. The performances of these algorithms were investigated on four real data sets; these data sets were: (1) UV-Visible spectra of two cardiovascular drugs (hydrochlorothiazide and valsartan); (2) visible spectra of copper, cobalt and nickel complexes with 4-(2-pyridylazo) resorcinol (PAR) as chromogenic reagent; (3) near infrared spectra of corn samples, and (4) near infrared diffuse transmission spectra of pharmaceutical tablets. Results indicate that besides its comparable accuracy and mathematical simplicity, it is computationally fast and robust to noise. Therefore, RF is a useful tool for regression studies and has potential for modeling linear and nonlinear multivariate calibration.
机译:通过对分类树和回归树(袋装CART),偏最小二乘(PLS)和非线性支持向量机(SVM)算法进行自举聚合,研究并比较了随机森林(RF)算法在光谱数据上的性能。在四个真实数据集上研究了这些算法的性能。这些数据集是:(1)两种心血管药物(氢氯噻嗪和缬沙坦)的紫外-可见光谱; (2)以4-(2-吡啶偶氮)间苯二酚(PAR)为显色剂的铜,钴和镍配合物的可见光谱; (3)玉米样品的近红外光谱,以及(4)药物片剂的近红外漫透射光谱。结果表明,除了具有相当的准确性和数学简便性之外,它在计算上也快速且对噪声具有鲁棒性。因此,RF是用于回归研究的有用工具,并且具有对线性和非线性多元校准建模的潜力。

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