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首页> 外文期刊>Journal of near infrared spectroscopy >Partial least square regression with variable-bagged model ensemble
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Partial least square regression with variable-bagged model ensemble

机译:带可变袋模型集成的偏最小二乘回归

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摘要

A new bagging strategy, called variable-bagging, for partial least square (PLS) modelling is proposed. Variable-bagging is to bootstrap a set of spectral variables for each modelling process. Namely, Variable-bagged PLS (VBPLS) can be viewed as an ensemble of multiple PLS models built with bootstrapped molecular structure features of the analytes, for example, wavenumber. It can condense information from spectral variables broadly distributed in the wavenumber dimension and truncate the contribution of non-informative variables such as interference or simple noise. Thus, it potentially has an advantage to yield superior regression performance to conventional PLS which is based on a single model. The performance of VBPLS is demonstrated for the determination of Brix values with a set of NIR spectra collected from apples. The comparisons with other PLS techniques reveal that VBPLS yields superior regression performance, in terms of both prediction error and robustness, to conventional PLS, even with the optimal number of latent variables. Namely, VBPLS models can describe more reasonable relationships between the NIR spectra and corresponding Brix values.
机译:提出了一种新的装袋策略,称为变量装袋,用于局部最小二乘(PLS)建模。变量装袋将为每个建模过程引导一组光谱变量。即,可变袋PLS(VBPLS)可以看作是多个具有分析物的自举分子结构特征(例如波数)的PLS模型的集合。它可以压缩波数维中广泛分布的频谱变量中的信息,并截断干扰或简单噪声等非信息性变量的贡献。因此,与基于单个模型的常规PLS相比,具有优良的回归性能可能具有优势。用从苹果收集的一组NIR光谱证明了VBPLS的性能可用于确定糖度。与其他PLS技术的比较表明,就预测误差和鲁棒性而言,VBPLS甚至在具有最佳潜在变量数量的情况下,在预测误差和鲁棒性方面均具有出色的回归性能。即,VBPLS模型可以描述NIR光谱和相应的Brix值之间的更合理的关系。

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