2.6 Statistical Methods for Geomorphic Distribution Modeling

作者: J. Hjort , M. Luoto

DOI: 10.1016/B978-0-12-374739-6.00028-2

关键词:

摘要: Statistically based geomorphic distribution modeling (GDM) has become popular among geoscientists as an efficient approach for analysis and prediction. Here, we provide a cross section of the concept GDM. First, introduce main steps in GDM process. Second, overview statistical techniques, which have shown to be promising modeling. Third, draw attention important advantages pitfalls Finally, highlight some future challenges application approach. The general aim is aid community gain novel insights into Earth surface process–environment relationships using

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