基于逐步贝叶斯线性回归的近红外光谱特征提取方法研究

IF 1.6 4区 化学 Q3 CHEMISTRY, APPLIED
Zhifeng Chen, Tianhong Pan, Qiong Wu, Xiaofeng Yu
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引用次数: 0

摘要

近红外(NIR)光谱包含有关分析物的信息以及非信息波长。为了构建高性能的数据驱动模型,必须选择与分析物具有强相关性的关键波长。本研究提出了一种称为逐步贝叶斯线性回归(SBLR)的特征选择方法来消除不相关波长,从而增强所构建模型的鲁棒性。首先,从最优变量集中随机选择一个波长,将其他波长放入候选变量集中。贝叶斯线性回归(BLR)是通过在每一步中从候选集中添加一个新变量或从最优集中删除一个变量来实现的。利用BLR模型进行f检验。与显著性水平为α的f检验的临界值比较,该检验决定变量是否保留在最优集合中。最后,将提取的变量用于构建BLR模型。验证了该方法的性能和泛化能力。在实验的基础上,对提取波长的物理解释与化学分析的角度一致,这对采集的近红外光谱数据有很好的理解。此外,与偏最小二乘回归、最小绝对收缩和选择算子、逐步回归等传统算法相比,该方法仅保留了全近红外光谱的部分有效波长。该方法证明了在近红外光谱中关键波长选择的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of feature extraction method for near infrared spectroscopy using stepwise bayesian linear regression
Near infrared (NIR) spectra contain information regarding the analyte as well as uninformative wavelengths. To build high-performance data-driven models, key wavelengths with a strong correlation to the analyte must be selected. This study proposes a feature selection method called stepwise Bayesian linear regression (SBLR) for eliminating unrelated wavelengths, thereby enhancing the robustness of the constructed model. First, a random wavelength is selected from an optimal variable set, and the other wavelengths are placed in a candidate variable set. A Bayesian linear regression (BLR) is implemented by adding a new variable from the candidate set or removing a variable from the optimal set in each step. Furthermore, the BLR model is utilized to perform the F-test. Comparing with the critical value of the F-test with a significance level of α, the test determines whether the variable is retained in the optimal set. Finally, the extracted variables are used to construct a BLR model. The performance and generalization ability of the proposed method were validated. The physical explanation of extracted wavelengths is consistent with the perspective of chemical analysis based on the experiment, which provides a good understanding of the collected NIR spectral data. In addition, compared with traditional algorithms, such as partial least squares regression, least absolute shrinkage and selection operator, and stepwise regression, the proposed method reserves only a few of the effective wavelengths from the full NIR spectra. The proposed method demonstrates potential for key wavelength selection in NIR spectroscopy.
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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
35
审稿时长
6 months
期刊介绍: JNIRS — Journal of Near Infrared Spectroscopy is a peer reviewed journal, publishing original research papers, short communications, review articles and letters concerned with near infrared spectroscopy and technology, its application, new instrumentation and the use of chemometric and data handling techniques within NIR.
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