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Evaluating existing manually constructed natural landscape classification with a machine learning-based approach

机译:用基于机器学习的方法评估现有手动构建的自然景观分类

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摘要

Some landscape classifications officially determine financial obligations; thus, they must be objective and precise. We presume it is possible to quantitatively evaluate existing manually constructed classifications and correct them if necessary. One option for achieving this goal is a machine learning method. With (re)modeling of the landscape classification and an explanation of its structure, we can add quantitative proof to its original (qualitative) description. The main objectives of the paper are to evaluate the consistency of the existing manually constructed natural landscape classification with a machine learning-based approach and to test the newly developed general black-box explanation method in order to explain variable importance for the differentiation between natural landscape types. The approach consists of training a model of the existing classification and a general method for explaining variable importance. As an example, we evaluated the existing natural landscape classification of Slovenia from 1998, which is still officially used in the agricultural taxation process. Our results showed that the modeled classification confirms the original with a high rate of agreement--94%. The complementary map of classification uncertainty (entropy) gave us more information on the areas where the classification should be checked, and the analysis of the variable importance provided insight into the differentiation between types. Although the selection of the exclusively climatic variables seemed unusual at first, we were able to understand "the computer's logic" and support geographical explanations for the model. We conclude that the approach can enhance the explanation and evaluation of natural landscape classifications and can be transparently transferred to other areas.
机译:一些景观分类正式确定财务义务;因此,他们必须是客观和精确的。我们假设可以定量评估现有手动构造的分类并如有必要纠正它们。实现此目标的一个选择是机器学习方法。通过(重新)建模景观分类和其结构的解释,我们可以向其原始(定性)描述添加定量证据。本文的主要目标是评估现有手动构建的自然景观分类的一致性与基于机器学习的方法,并测试新开发的一般黑盒子解释方法,以解释天然景观之间的变化变化类型。该方法包括培训现有分类的模型和用于解释变量重要性的一般方法。例如,我们从1998年评估了斯洛文尼亚的现有自然景观分类,仍在农业税收过程中正式使用。我们的研究结果表明,建模分类确认了符合高税率 - 94%的原件。分类不确定性的互补地图(熵)给了我们更多关于应检查分类的区域的更多信息,并且对变量重要性的分析提供了洞察类型之间的差异化。虽然首先选择完全气候变量似乎异常,但我们能够了解“计算机的逻辑”并支持模型的地理解释。我们得出结论,该方法可以增强自然景观分类的解释和评估,可以透明地转移到其他地区。

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