Random forest predictive modeling of mineral prospectivity with small number of prospects and data with missing values in Abra (Philippines)

Machine learning methods that have been used in data-driven predictive modeling of mineral prospectivity (e.g., artificial neural networks) invariably require large number of training prospect/locations and are unable to handle missing values in certain evidential data. The Random Forests (RF) algor...

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Veröffentlicht in:Computers & geosciences 2015-01, Vol.74, p.60-70
Hauptverfasser: Carranza, Emmanuel John M., Laborte, Alice G.
Format: Artikel
Sprache:eng
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Zusammenfassung:Machine learning methods that have been used in data-driven predictive modeling of mineral prospectivity (e.g., artificial neural networks) invariably require large number of training prospect/locations and are unable to handle missing values in certain evidential data. The Random Forests (RF) algorithm, which is a machine learning method, has recently been applied to data-driven predictive mapping of mineral prospectivity, and so it is instructive to further study its efficacy in this particular field. This case study, carried out using data from Abra (Philippines), examines (a) if RF modeling can be used for data-driven modeling of mineral prospectivity in areas with a few (i.e.,
ISSN:0098-3004
1873-7803
DOI:10.1016/j.cageo.2014.10.004