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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >CRITIQUE OF STEPWISE MULTIPLE LINEAR REGRESSION FOR THE EXTRACTION OF LEAF BIOCHEMISTRY INFORMATION FROM LEAF REFLECTANCE DATA
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CRITIQUE OF STEPWISE MULTIPLE LINEAR REGRESSION FOR THE EXTRACTION OF LEAF BIOCHEMISTRY INFORMATION FROM LEAF REFLECTANCE DATA

机译:从叶反射数据中提取叶生物化学信息的逐步多元线性回归的评论

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This study examined the use of stepwise multiple linear regression to quantify leaf carbon, nitrogen, lignin, cellulose, lose, dry weight, and water compositions from leaf level reflectance (R). Two fresh leaf and one dry leaf datasets containing a broad range of native and cultivated plant species were examined using unconstrained stepwise multiple linear regression and constrained regression with wavelengths reported from other leaf level studies and wavelengths derived from chemical spectroscopy. Although stepwise multiple linear regression explained large amounts of the variation in the chemical data, the bands selected were not related to known absorption bands, varied among datasets and expression bases for the chemical [concentration (g g(-1)) or content (g m(-2))], did not correspond to bands selected in other studies, and were sensitive to the samples entered into the regression. Stepwise multiple regression using artificially constructed datasets that randomized the association between nitrogen concentration and reflectance spectra produced coefficients of determination (R(2)'s) between 0.41 and 0.82 for first and second derivative log(1/R) spectra. The R(2)'s for correctly-paired nitrogen data and first and second derivative log(1/R) only exceeded the average randomized R(2)'s by 0.02-0.42. Replication of this randomization experiment on a larger dry ground leaf data set from the Harvard Forest showed the same trends but lower R(2)'s. [References: 28]
机译:这项研究检验了使用逐步多元线性回归从叶水平反射率(R)量化叶片碳,氮,木质素,纤维素,失重,干重和水的组成。使用无约束的逐步多元线性回归和受约束的回归,使用其他叶水平研究报告的波长和化学光谱法得出的波长,对包含广泛的本地和栽培植物物种的两个新鲜叶和一个干燥叶数据集进行了检查。尽管逐步多元线性回归解释了化学数据的大量变化,但所选的谱带与已知的吸收谱带无关,在化学数据[浓度(gg(-1))或含量(gm( -2))],不对应于其他研究中选择的谱带,并且对输入回归的样本敏感。使用人工构建的数据集进行逐步多元回归分析,该数据集将氮浓度和反射光谱之间的关联随机化,从而为一阶和二阶对数log(1 / R)光谱产生的测定系数(R(2)'s在0.41至0.82之间)。正确配对的氮数据以及一阶和二阶导数log(1 / R)的R(2)仅比平均随机R(2)超出0.02-0.42。在来自哈佛森林的较大的干燥地面数据集上复制此随机实验显示出相同的趋势,但R(2)较低。 [参考:28]

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