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Presenting logistic regression-based landslide susceptibility results

机译:呈现基于逻辑回归的滑坡易感性结果

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摘要

A new work-flow is proposed to unify the way the community shares Logistic Regression results for landslide susceptibility purposes. Although Logistic Regression models and methods have been widely used in geomorphology for several decades, no standards for presenting results in a consistent way have been adopted; most papers report parameters with different units and interpretations, therefore limiting potential meta-analytic applications. We first summarize the major differences in the geomorphological literature and then investigate each one proposing current best practices and few methodological developments. The latter is mainly represented by a widely used approach in statistics for simultaneous parameter estimation and variable selection in generalized linear models, namely the Least Absolute Shrinkage Selection Operator (LASSO). The North-easternmost sector of Sicily (Italy) is chosen as a straightforward example with well exposed debris flows induced by extreme rainfall.
机译:建议统一新的工作流程,以统一社区分享滑坡易感性目的的逻辑回归结果。 虽然Logistic回归模型和方法已广泛用于几十年的地貌上,但没有采用一致方式提出结果的标准; 大多数论文报告具有不同单位和解释的参数,因此限制了潜在的元分析应用。 我们首先总结了地貌文学的主要差异,然后调查每个提出当前最佳实践和少数方法的发展。 后者主要由广泛参数估计和广义线性模型中的同时参数估计和变量选择的广泛使用方法表示,即绝对收缩选择操作员(套索)。 最西西里岛(意大利)的东部最多部门被选为一个直接的例子,具有极端降雨诱导的暴露碎片流动。

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