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Analysis of training sample selection strategies for regression-based quantitative landslide susceptibility mapping methods

机译:基于回归的定量滑坡敏感性测绘方法的训练样本选择策略分析

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摘要

All of the quantitative landslide susceptibility mapping (QLSM) methods requires two basic data types, namely, landslide inventory and factors that influence landslide occurrence (landslide influencing factors, LIF). Depending on type of landslides, nature of triggers and LIF, accuracy of the QLSM methods differs. Moreover, how to balance the number of 0 (nonoccurrence) and 1 (occurrence) in the training set obtained from the landslide inventory and how to select which one of the 1's and 0's to be included in QLSM models play critical role in the accuracy of the QLSM. Although performance of various QLSM methods is largely investigated in the literature, the challenge of training set construction is not adequately investigated for the QLSM methods. In order to tackle this challenge, in this study three different training set selection strategies along with the original data set is used for testing the performance of three different regression methods namely Logistic Regression (LR), Bayesian Logistic Regression (BLR) and Fuzzy Logistic Regression (FLR). The first sampling strategy is proportional random sampling (PRS), which takes into account a weighted selection of landslide occurrences in the sample set. The second method, namely non-selective nearby sampling (NNS), includes randomly selected sites and their surrounding neighboring points at certain preselected distances to include the impact of clustering. Selective nearby sampling (SNS) is the third method, which concentrates on the group of l's and their surrounding neighborhood. A randomly selected group of landslide sites and their neighborhood are considered in the analyses similar to NNS parameters. It is found that LR-PRS, FLR-PRS and BLR-Whole Data set-ups, with order, yield the best fits among the other alternatives. The results indicate that in QLSM based on regression models, avoidance of spatial correlation in the data set is critical for the model's performance.
机译:所有的定量滑坡敏感性地图(QLSM)方法都需要两种基本数据类型,即滑坡清单和影响滑坡发生的因素(滑坡影响因子,LIF)。根据滑坡的类型,触发器的性质和LIF,QLSM方法的准确性会有所不同。此外,如何平衡从滑坡清单获得的训练集中的0(不出现)和1(出现)的数量,以及如何选择要纳入QLSM模型的1和0中的哪一个在精度方面至关重要。 QLSM。尽管在文献中对各种QLSM方法的性能进行了大量研究,但对于QLSM方法,训练集构建的挑战尚未得到充分研究。为了应对这一挑战,在本研究中,使用了三种不同的训练集选择策略以及原始数据集来测试三种不同的回归方法的性能,即Logistic回归(LR),贝叶斯Logistic回归(BLR)和Fuzzy Logistic回归(FLR)。第一种采样策略是比例随机采样(PRS),它考虑了样本集中滑坡发生的加权选择。第二种方法,即非选择性附近采样(NNS),包括在某些预选距离处随机选择的站点及其周围的邻近点,以包括聚类的影响。选择性附近采样(SNS)是第三种方法,它集中于l的组及其周围的邻域。与NNS参数类似,在分析中考虑了随机选择的一组滑坡点及其附近地区。已经发现,按顺序排列的LR-PRS,FLR-PRS和BLR-Whole数据设置在其他替代方案中产生了最佳拟合。结果表明,在基于回归模型的QLSM中,避免数据集中的空间相关性对于模型的性能至关重要。

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