An Efficient Model-Agnostic Approach for Uncertainty Estimation in Data-Restricted Pedometric Applications

Viacheslav Barkov, Jonas Schmidinger, Robin Gebbers, Martin Atzmueller
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Abstract

This paper introduces a model-agnostic approach designed to enhance uncertainty estimation in the predictive modeling of soil properties, a crucial factor for advancing pedometrics and the practice of digital soil mapping. For addressing the typical challenge of data scarcity in soil studies, we present an improved technique for uncertainty estimation. This method is based on the transformation of regression tasks into classification problems, which not only allows for the production of reliable uncertainty estimates but also enables the application of established machine learning algorithms with competitive performance that have not yet been utilized in pedometrics. Empirical results from datasets collected from two German agricultural fields showcase the practical application of the proposed methodology. Our results and findings suggest that the proposed approach has the potential to provide better uncertainty estimation than the models commonly used in pedometrics.
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在数据受限的计步应用中进行不确定性估计的高效模型诊断方法
本文介绍了一种与模型无关的方法,旨在加强土壤特性预测建模中的不确定性估计,这是推进土壤测量学和数字土壤制图实践的关键因素。为了解决土壤研究中数据稀缺的典型难题,我们提出了一种改进的不确定性估计技术。该方法基于将回归任务转化为分类问题,这不仅可以产生可靠的不确定性估计,还可以应用尚未在测绘学中使用过的具有竞争力性能的成熟机器学习算法。从德国两个农田收集的数据集得出的经验结果展示了所提方法的实际应用。我们的结果和发现表明,与计步学中常用的模型相比,所提出的方法有可能提供更好的不确定性估计。
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