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A comparison of Support Vector Machines and Bayesian algorithms for landslide susceptibility modelling

机译:用于滑坡敏感性建模的支持向量机和贝叶斯算法的比较

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In this study, the main goal is to compare the predictive capability of Support Vector Machines (SVM) with four Bayesian algorithms namely Na?ve Bayes Tree (NBT), Bayes network (BN), Na?ve Bayes (NB), Decision Table Na?ve Bayes (DTNB) for identifying landslide susceptibility zones in Pauri Garhwal district (India). First, landslide inventory map was built using 1295 historical landslide data, then in total sixteen influencing factors were selected and tested for landslide susceptibility modelling. Performance of the model was evaluated and compared using Statistical based index methods, Area under the Receiver Operating Characteristic (ROC) curve named AUC, and Chi-square method. Analysis results show that that the SVM has the highest prediction capability, followed by the NBT, DTNBT, BN and NB, respectively. Thus, this study confirms that the SVM is one of the benchmark models for the assessment of susceptibility of landslides.
机译:在这项研究中,主要目标是将支持向量机(SVM)的预测能力与四个贝叶斯算法进行比较,即Na'Ve Bayes Tree(NBT),贝叶斯网络(BN),Na?Ve Bayes(NB),决策表 na?ve贝叶斯(DTNB)用于识别Pauri Garwal区(印度)的滑坡易感区。 首先,使用1295历史滑坡数据建造了滑坡库存地图,然后选择了601个影响因素,并对滑坡易感性建模进行了测试。 使用基于统计的索引方法,接收器操作特性(ROC)曲线的区域进行了评估和比较模型的性能,命名为AUC和Chi-Square方法。 分析结果表明,SVM具有最高的预测能力,其次分别是NBT,DTNBT,BN和NB。 因此,本研究证实,SVM是用于评估山体滑坡易感性的基准模型之一。

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