Introduction The identification of potentially mineralized areas has progressed with the use and interpretation of all available exploratory data in the form of mineral potential modeling (MPM) (Yousefi and Nykänen, 2017). Recently, machine learning methods have been a popular research topic in the field of MPM ((Chen and Wu, 2016). Machine learning algorithms that have been used in MPM generally fall into the categories of being supervised or unsupervised. Supervised models, use the location of the known mineral occurrences as training sites (or labeled data). Therefore, these models suffer stochastic bias and error (Zuo and Carranza, 2011). Unsupervised models classify mineral prospectivity of every location based solely on feature stati...
In this study, the zonality method has been used to separate geochemical anomalies and to calculate ...
This study aimed to model the prospectivity for placer deposits using geomorphic and landscape param...
Mineral Prospectivity Conference, France.In this work, we present logistic-based mineral prospecti...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
This article has been accepted for publication in Geocarto International, published by Taylor & Fran...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...
The Salafchegan area in central Iran is a greenfield region of high porphyry Cu–Au potential, for wh...
A current mineral exploration focus is the development of tools to identify magmatic districts predi...
In the modern era of diminishing returns on fixed exploration budgets, challenging targets, and ever...
Introduction The growing demand for base metals such as iron, copper, lead and zinc on the one hand...
Estimation of ore grade is a time and cost consuming process that requires laboratory based and expl...
Fuzzy set theory was successfully used to map areas of copper porphyry mineralization potential in t...
Machine learning algorithms (MLAs) such us artificial neural networks (ANNs), regression trees (RTs)...
Porphyry copper deposits form from upper crustal H₂O saturated magmatic systems, along ancient and a...
Peer review journal article. Geology.Diverse deposit-types or mineral systems form by diverse geolog...
In this study, the zonality method has been used to separate geochemical anomalies and to calculate ...
This study aimed to model the prospectivity for placer deposits using geomorphic and landscape param...
Mineral Prospectivity Conference, France.In this work, we present logistic-based mineral prospecti...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
This article has been accepted for publication in Geocarto International, published by Taylor & Fran...
The application of machine learning (ML) algorithms for processing remote sensing data is momentous,...
The Salafchegan area in central Iran is a greenfield region of high porphyry Cu–Au potential, for wh...
A current mineral exploration focus is the development of tools to identify magmatic districts predi...
In the modern era of diminishing returns on fixed exploration budgets, challenging targets, and ever...
Introduction The growing demand for base metals such as iron, copper, lead and zinc on the one hand...
Estimation of ore grade is a time and cost consuming process that requires laboratory based and expl...
Fuzzy set theory was successfully used to map areas of copper porphyry mineralization potential in t...
Machine learning algorithms (MLAs) such us artificial neural networks (ANNs), regression trees (RTs)...
Porphyry copper deposits form from upper crustal H₂O saturated magmatic systems, along ancient and a...
Peer review journal article. Geology.Diverse deposit-types or mineral systems form by diverse geolog...
In this study, the zonality method has been used to separate geochemical anomalies and to calculate ...
This study aimed to model the prospectivity for placer deposits using geomorphic and landscape param...
Mineral Prospectivity Conference, France.In this work, we present logistic-based mineral prospecti...