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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >Quantile Regression Applied to Spectral Distance Decay
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Quantile Regression Applied to Spectral Distance Decay

机译:分位数回归应用于谱距离衰减

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Remotely sensed imagery has long been recognized as a powerful support for characterizing and estimating biodiversity. Spectral distance among sites has proven to be a powerful approach for detecting species composition variability. Regression analysis of species similarity versus spectral distance allows us to quantitatively estimate the amount of turnover in species composition with respect to spectral and ecological variability. In classical regression analysis, the residual sum of squares is minimized for the mean of the dependent variable distribution. However, many ecological data sets are characterized by a high number of zeroes that add noise to the regression model. Quantile regressions can be used to evaluate trend in the upper quantiles rather than a mean trend across the whole distribution of the dependent variable. In this letter, we used ordinary least squares (OLS) and quantile regressions to estimate the decay of species similarity versus spectral distance. The achieved decay rates were statistically nonzero (p < 0.01) considering both OLS and quantile regressions. Nonetheless, the OLS regression estimate of the mean decay rate was only half the decay rate indicated by the upper quantiles. Moreover, the intercept value, representing the similarity reached when the spectral distance approaches zero, was very low compared with the intercepts of the upper quantiles, which detected high species similarity when habitats are more similar. In this letter, we demonstrated the power of using quantile regressions applied to spectral distance decay to reveal species diversity patterns otherwise lost or underestimated by OLS regression.
机译:长期以来,遥感影像一直被认为是表征和估算生物多样性的有力支持。事实证明,站点之间的光谱距离是检测物种组成变异性的有效方法。物种相似度对光谱距离的回归分析使我们能够定量估计物种组成相对于光谱和生态变异性的周转量。在经典回归分析中,残差平方和最小化为因变量分布的平均值。但是,许多生态数据集的特征是大量的零,这会给回归模型增加噪声。分位数回归可用于评估较高分位数的趋势,而不是评估因变量整个分布的平均趋势。在这封信中,我们使用普通最小二乘(OLS)和分位数回归来估计物种相似度随光谱距离的衰减。考虑到OLS和分位数回归,获得的衰减率在统计上非零(p <0.01)。但是,OLS回归估计的平均衰减率仅为上分位数指示的衰减率的一半。此外,与上分位数的截距相比,代表当光谱距离接近零时达到的相似度的截距值非常低,后者在生境更相似时检测到较高的物种相似度。在这封信中,我们证明了将分位数回归应用于光谱距离衰减以揭示物种多样性模式的强大功能,否则该物种多样性模式将因OLS回归而丢失或被低估。

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