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Landslide susceptibility assessment using SVM machine learning algorithm

机译:基于SVM机器学习算法的滑坡敏感性评价。

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This paper introduces the current machine learning approach to solving spatial modeling problems in the domain of landslide susceptibility assessment. The latter is introduced as a classification problem, having multiple (geological, morphological, environmental etc.) attributes and one referent landslide inventory map from which to devise the classification rules. Three different machine learning algorithms were compared: Support Vector Machines, Decision Trees and Logistic Regression. A specific area of the Fruska Gora Mountain (Serbia) was selected to perform the entire modeling procedure, from attribute and referent data preparation/processing, through the classifiers' implementation to the evaluation, carried out in terms of the model's performance and agreement with the referent data. The experiments showed that Support Vector Machines outperformed the other proposed methods, and hence this algorithm was selected as the model of choice to be compared with a common knowledge-driven method – the Analytical Hierarchy Process – to create a landslide susceptibility map of the relevant area. The SVM classifier outperformed the AHP approach in all evaluation metrics (k index, area under ROC curve and false positive rate in stable ground class).
机译:本文介绍了当前的机器学习方法,以解决滑坡敏感性评估领域中的空间建模问题。后者是作为分类问题引入的,具有多个(地质,形态,环境等)属性和一个参考滑坡清单图,可根据该图设计分类规则。比较了三种不同的机器学习算法:支持向量机,决策树和逻辑回归。选择了Fruska Gora山(塞尔维亚)的特定区域来执行整个建模过程,从属性和参考数据的准备/处理,到分类器的实施,再到评估,都要根据模型的性能并与模型达成一致。参考数据。实验表明,支持向量机的性能优于其他提出的方法,因此,该算法被选为模型,与常见的知识驱动方法(层次分析法)进行比较,以创建相关区域的滑坡敏感性图。 。 SVM分类器在所有评估指标(k指数,ROC曲线下的面积和稳定基础类别的误报率)方面均优于AHP方法。

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