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首页> 外文期刊>Arabian journal of geosciences >Comparing GIS-based support vector machine kernel functions for landslide susceptibility mapping
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Comparing GIS-based support vector machine kernel functions for landslide susceptibility mapping

机译:比较基于GIS的支持向量机核函数滑坡敏感性映射

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This study compares the predictive performance of GIS-based landslide susceptibility mapping (LSM) using four different kernel functions in support vector machines (SVMs). Nine possible causal criteria were considered based on earlier similar studies for an area in the eastern part of the Khuzestan province of southern Iran. Different models and the resulting landslide susceptibility maps were created using information on known landslide events from a landslide inventory dataset. The models were trained using landslide inventory dataset. A two-step accuracy assessment was implemented to validate the results and to compare the capability of each function. The radial basis function was identified as the most efficient kernel function for LSM with the resulting landslide susceptibility map showing the highest predictive accuracy, followed by the polynomial kernel function. According to the obtained results, it concluded that using SVMs can generally be considered to be an effective method for LSM while it demands careful consideration of kernel function. The results of the present research will also assist other researchers to select the best SVM kernel function to use for LSM.
机译:本研究比较了使用四种不同的核心功能在支持向量机(SVM)中的四种不同内核功能的GIS基滑坡敏感性映射(LSM)的预测性能。根据伊朗南部南部南部省省东部的一个地区的早期类似研究,考虑了九种可能的因果标准。使用来自Landslide Inventory DataSet的已知滑坡事件的信息来创建不同的模型和产生的滑坡敏感性图。使用Landslide Inventory DataSet培训模型。实施了两步精度评估以验证结果并比较每个功能的能力。径向基函数被识别为LSM的最有效的核心功能,其中包含的滑坡敏感性图显示了最高的预测精度,其次是多项式内核功能。根据所得的结果,它得出结论,使用SVM通常可以被认为是LSM的有效方法,而需要仔细考虑内核功能。目前研究的结果还将帮助其他研究人员选择用于LSM的最佳SVM内核功能。

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