Landslide susceptibility estimation by random forests technique: sensitivity and scaling issues
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Abstract
Abstract. Despite the large number of recent advances and developments in landslide susceptibility mapping (LSM) there is still a lack of studies focusing on specific aspects of LSM model sensitivity. For example, the influence of factors such as the survey scale of the landslide conditioning variables (LCVs), the resolution of the mapping unit (MUR) and the optimal number and ranking of LCVs have never been investigated analytically, especially on large data sets. In this paper we attempt this experimentation concentrating on the impact of model tuning choice on the final result, rather than on the comparison of methodologies. To this end, we adopt a simple implementation of the random forest (RF), a machine…
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Authors
4Topics & keywords
Topics
Keywords
- Categorical variable
- Landslide
- Random forest
- Sensitivity (control systems)
- Computer science
- Set (abstract data type)
- Data mining
- Scale (ratio)
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