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A Spectral Assignment-Oriented Approach to Improve Interpretability and Accuracy of Proxy Spectral-Based Models

机译:面向谱分配的方法,以提高基于代理谱的模型的可解释性和准确性

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In modeling chemical attributes using hyperspectral data, nonlinear relationships between the predictor and the response are frequent. The common nonlinear modeling techniques improve prediction accuracy but suffer from low interpretability of the models. In this paper, we demonstrate a new multivariate modeling method, denoted as spectral assignment-oriented partial least squares (SAO-PLS), which is designed to provide a nonlinear modeling solution with strong interpretability products. The need for this approach is apparent when a given sample population consists of different spectral features for different levels of the response. Accordingly, the suggested SAO-PLS algorithm segments the data in an optimal location on the response distribution by maximizing the difference in spectral assignments between two clusters. SAO-PLS is applied here to two test cases with different characteristics: 1) an established data set containing airborne hyperspectral data of asphaltic roads, merged with in situ measured dynamic friction values captured using a standardized method and 2) a soil spectral library, spectrally measured with an analytical spectral device spectrometer, to which organic carbon measurements were applied. Our results demonstrate the superiority of SAO-PLS over partial least-squares regression for both model accuracy and interpretability, providing a deeper understanding of the underlying processes.
机译:在使用高光谱数据对化学属性进行建模时,预测变量和响应之间的非线性关系很频繁。常用的非线性建模技术可提高预测精度,但模型的解释性较低。在本文中,我们演示了一种新的多元建模方法,称为面向频谱分配的偏最小二乘(SAO-PLS),旨在为非线性建模解决方案提供强大的可解释性产品。当给定的样本总体由针对不同响应级别的不同光谱特征组成时,对这种方法的需求显而易见。因此,建议的SAO-PLS算法通过最大化两个群集之间的频谱分配差异,在响应分布的最佳位置分割数据。 SAO-PLS在这里用于两个具有不同特征的测试案例:1)建立的数据集包含沥青路面的机载高光谱数据,并与使用标准方法捕获的现场测得的动态摩擦值合并; 2)土壤光谱库用分析光谱设备光谱仪测量,并应用有机碳测量。我们的结果证明了SAO-PLS在模型准确性和可解释性方面优于部分最小二乘回归,从而提供了对基础过程的更深入了解。

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