An introduction to learning algorithms and potential applications in geomorphometry and Earth surface dynamics
Loading...
Date
Authors
Valentine, Andrew
Kalnins, Lara M.
Journal Title
Journal ISSN
Volume Title
Publisher
Copernicus GmbH
Abstract
"Learning algorithms" are a class of computational tool designed to infer information from a data set, and then apply that information predictively. They are particularly well suited to complex pattern recognition, or to situations where a mathematical relationship needs to be modelled but where the underlying processes are not well understood, are too expensive to compute, or where signals are over-printed by other effects. If a representative set of examples of the relationship can be constructed, a learning algorithm can assimilate its behaviour, and may then serve as an efficient, approximate computational implementation thereof. A wide range of applications in geomorphometry and Earth surface dynamics may be envisaged, ranging from classification of landforms through to prediction of erosion characteristics given input forces. Here, we provide a practical overview of the various approaches that lie within this general framework, review existing uses in geomorphology and related applications, and discuss some of the factors that determine whether a learning algorithm approach is suited to any given problem.
Description
Keywords
Citation
Collections
Source
Earth Surface Dynamics
Type
Book Title
Entity type
Access Statement
Open Access