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Comparative landslide spatial research based on various sample sizes and ratios in Penang Island, Malaysia

机译:基于各种样本尺寸和比率的比较滑坡空间研究,马来西亚槟城岛的尺寸和比率

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摘要

This paper aims to compare and develop the influence on different sample sizes and sample ratios when using machine learning (ML) models, i.e., support vector machine (SVM) and artificial neural network (ANN), to produce landslide susceptibility maps (LSMs) in Penang Island, Malaysia. At the same time, traditional statistical (TS) models are also considered to produce LSMs in this comparative research. The receiver operating characteristic (ROC) curve and recall metric are applied to evaluate the model's performance. Based on the evaluation criteria, the ML model outperforms the TS models and the ML models trained using the datasets with larger sample size give a better performance. ML models, especially SVM models, have better performance when training with balanced datasets as well as the datasets of more landslide sample data. Kruskal-Wallis test and Mann-WhitneyUtest are applied to test the significance. The results indicate that sample size and sample ratio are essential factors when considering ML models to produce LSMs. The LSMs produced in this research can provide valid and useful information to the local authorities for landslide mitigation and prediction.
机译:本文旨在使用机器学习(ML)模型,即支持向量机(SVM)和人工神经网络(ANN)来进行比较和发展对不同样本尺寸和采样比率的影响,以产生滑坡敏感性图(LSM)槟城岛,马来西亚。同时,传统的统计(TS)模型也被认为在该比较研究中产生LSM。应用接收器操作特性(ROC)曲线和召回度量标准来评估模型的性能。基于评估标准,ML模型优于TS模型,使用具有较大样本大小的数据集训练的ML型号提供更好的性能。 ML模型,尤其是SVM型号,在使用平衡数据集以及更多滑坡样本数据的数据集时具有更好的性能。 Kruskal-Wallis测试和Mann-Whitneytest用于测试意义。结果表明,当考虑ML模型以产生LSM时,样本量和样本比是必不可少的因素。本研究中产生的LSM可以向地方当局提供有效和有用的信息,用于滑坡缓解和预测。

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