The Random Forests (RF) algorithm is a machine learning method that has recently been demonstrated as a viable technique for data-driven predictive modeling of mineral prospectivity, and thus, it is instructive to further examine its usefulness in this particular field. A case study was carried out using data from Catanduanes Island (Philippines) to investigate further (a) if RF modeling can be used for data-driven modeling of mineral prospectivity in areas with few (i.e., <20) mineral occurrences and (b) if RF modeling can handle predictor variables with missing values. We found that RF modeling outperforms evidential belief (EB) modeling of prospectivity for hydrothermal Au–Cu deposits in Catanduanes Island, where 17 hydrothermal Au–Cu pr...
The Trident project is located in the Domes region of the Central African Copper Belt and hosts a nu...
This paper proposes that the spatial pattern of known prospects of the deposit-type sought is the ke...
Identifying the location of intrusions is a key component in exploration for porphyry Cu ± Mo ± Au d...
The Random Forests (RF) algorithm is a machine learning method that has recently been demonstrated a...
Machine learning methods that have been used in data-driven predictive modeling of mineral prospecti...
The Random Forests (RF) algorithm has recently become a fledgling method for data-driven predictive ...
Mineral exploration activities require robust predictive models that result in accurate mapping of t...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
Machine learning algorithms (MLAs) such us artificial neural networks (ANNs), regression trees (RTs)...
Machine learning describes an array of computational and nested statistical methods whereby a comput...
Machine learning algorithms (e.g., random forest (RF)) have recently been performed in data-driven m...
In a mine, knowledge of rock types is often desired as they are important indicators of grade, miner...
International audienceMineral prospectivity mapping (MPM) aims at outlining areas with the highest m...
Mineral prospectivity mapping constitutes an efficient tool for delineating areas of highest interes...
The Eastern Goldfields of Western Australia is one of the world’s premier gold-producing regions; ho...
The Trident project is located in the Domes region of the Central African Copper Belt and hosts a nu...
This paper proposes that the spatial pattern of known prospects of the deposit-type sought is the ke...
Identifying the location of intrusions is a key component in exploration for porphyry Cu ± Mo ± Au d...
The Random Forests (RF) algorithm is a machine learning method that has recently been demonstrated a...
Machine learning methods that have been used in data-driven predictive modeling of mineral prospecti...
The Random Forests (RF) algorithm has recently become a fledgling method for data-driven predictive ...
Mineral exploration activities require robust predictive models that result in accurate mapping of t...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
Machine learning algorithms (MLAs) such us artificial neural networks (ANNs), regression trees (RTs)...
Machine learning describes an array of computational and nested statistical methods whereby a comput...
Machine learning algorithms (e.g., random forest (RF)) have recently been performed in data-driven m...
In a mine, knowledge of rock types is often desired as they are important indicators of grade, miner...
International audienceMineral prospectivity mapping (MPM) aims at outlining areas with the highest m...
Mineral prospectivity mapping constitutes an efficient tool for delineating areas of highest interes...
The Eastern Goldfields of Western Australia is one of the world’s premier gold-producing regions; ho...
The Trident project is located in the Domes region of the Central African Copper Belt and hosts a nu...
This paper proposes that the spatial pattern of known prospects of the deposit-type sought is the ke...
Identifying the location of intrusions is a key component in exploration for porphyry Cu ± Mo ± Au d...