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A comparative study for least angle regression on NIR spectra analysis to determine internal qualities of navel oranges

机译:最小角度回归近红外光谱分析以确定脐橙内部质量的比较研究

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摘要

Internal qualities of navel oranges are the key factors for their market value and of major concern to customers. Unlike traditional subjective quality assessment, near infrared (NIR) spectroscopy based techniques are quantitative, convenient and non-destructive. Various machine learning methods have been applied to NIR spectra analysis to determine the fruit qualities. NIR spectra are usually of very high dimension. Explicit or implicit variable selection is essential to ensure prediction performance. Least angle regression (LAR) is a relatively new and efficient machine learning algorithm for regression analysis and is good for variable selection. We investigate the potential of the LAR algorithm for NIR spectra analysis to determine the internal qualities of navel oranges. A total of 1535 navel orange samples from 15 origins were prepared for NIR spectra collection and quality parameters measurement. Spectra are of 1500 dimensions with wavelengths ranging from 1000 nm to 2499 nm. The LAR was compared with the most widely used linear and nonlinear methods in three aspects: prediction accuracy, computational efficiency, and model interpretability. The results showed that the prediction performance of LAR was better than that of PLS, while slightly inferior to that of least squares support vector machines (LS-SVM). LAR was computationally more efficient than both PLS and LS-SVM. By concentrating on the most important predictors, LAR is much easier to reveal the most relevant predictors than PLS; LS-SVM was hardly interpretable because of its nonlinear kernel. (C) 2015 Elsevier Ltd. All rights reserved.
机译:脐橙的内部品质是其市场价值和客户最关注的关键因素。与传统的主观质量评估不同,基于近红外(NIR)光谱的技术是定量,便捷且无损的。各种机器学习方法已应用于NIR光谱分析以确定水果质量。近红外光谱通常具有很高的尺寸。显式或隐式变量选择对​​于确保预测性能至关重要。最小角度回归(LAR)是一种用于回归分析的相对较新且有效的机器学习算法,适用于变量选择。我们研究了LAR算法用于近红外光谱分析以确定脐橙内部质量的潜力。共准备了来自15个来源的1535个脐橙样品,用于近红外光谱收集和质量参数测量。光谱的大小为1500,波长范围为1000 nm至2499 nm。在三个方面将LAR与最广泛使用的线性和非线性方法进行了比较:预测准确性,计算效率和模型可解释性。结果表明,LAR的预测性能优于PLS,但略逊于最小二乘支持向量机(LS-SVM)。 LAR在计算上比PLS和LS-SVM都高效。通过专注于最重要的预测因素,LAR比PLS更容易揭示最相关的预测因素。 LS-SVM由于其非线性内核而难以解释。 (C)2015 Elsevier Ltd.保留所有权利。

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