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Per-pixel bias-variance decomposition of continuous errors in data-driven geospatial modeling: A case study in environmental remote sensing

机译:数据驱动的地理空间建​​模中连续误差的每像素偏差方差分解:环境遥感中的案例研究

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This study investigates the usefulness of a per-pixel bias-variance error decomposition (BVD) for understanding and improving spatially-explicit data-driven models of continuous variables in environmental remote sensing (ERS). BVD is a model evaluation method originated from machine learning and have not been examined for ERS applications. Demonstrated with a showcase regression tree model mapping land imperviousness (0-100%) using Landsat images, our results showed that BVD can reveal sources of estimation errors, map how these sources vary across space, reveal the effects of various model characteristics on estimation accuracy, and enable in-depth comparison of different error metrics. Specifically, BVD bias maps can help analysts identify and delineate model spatial non-stationarity; BVD variance maps can indicate potential effects of ensemble methods (e.g. bagging), and inform efficient training sample allocation - training samples should capture the full complexity of the modeled process, and more samples should be allocated to regions with more complex underlying processes rather than regions covering larger areas. Through examining the relationships between model characteristics and their effects on estimation accuracy revealed by BVD for both absolute and squared errors (i.e. error is the absolute or the squared value of the difference between observation and estimate), we found that the two error metrics embody different diagnostic emphases, can lead to different conclusions about the same model, and may suggest different solutions for performance improvement. We emphasize BVD's strength in revealing the connection between model characteristics and estimation accuracy, as understanding this relationship empowers analysts to effectively steer performance through model adjustments. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:这项研究调查了每个像素的偏差方差误差分解(BVD)在理解和改进环境遥感(ERS)中连续变量的空间显式数据驱动模型的有用性。 BVD是一种源自机器学习的模型评估方法,尚未针对ERS应用进行检查。通过使用Landsat影像绘制展示土地不渗透性(0-100%)的展示架回归树模型进行演示,我们的结果表明BVD可以揭示估计误差的来源,映射这些来源在空间中的变化情况,揭示各种模型特征对估计准确性的影响,并可以对不同的错误指标进行深入比较。具体而言,BVD偏差图可帮助分析人员识别和描绘模型的空间非平稳性; BVD方差图可以指示集成方法(例如装袋)的潜在影响,并告知有效的训练样本分配-训练样本应捕获建模过程的全部复杂性,并且应将更多样本分配给具有更复杂基础过程的区域而不是区域覆盖更大的区域。通过检查模型特征之间的关系及其对绝对误差和平方误差(即误差是观测值和估计值之差的绝对值或平方值)的BVD揭示的估计准确性的影响,我们发现这两个误差度量体现出不同诊断重点,可能会导致对同一模型的不同结论,并可能提出不同的性能改进解决方案。我们强调BVD在揭示模型特征与估计准确性之间的联系方面的优势,因为了解这种关系使分析师能够通过模型调整有效地控制绩效。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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