In the modern era of diminishing returns on fixed exploration budgets, challenging targets, and ever-increasing numbers of multi-parameter datasets, proper management and integration of available data is a crucial component of any mineral exploration program. Machine learning algorithms have successfully been used for years by the technology sector to accomplish just this task on their databases, and recent developments aim at appropriating these successes to the field of mineral exploration. Framing the exploration task as a supervised learning problem, the geological, geochemical and geophysical information can be used as training data, and known mineral occurences can be used as training labels. The goal is to parameterize the complex re...
GIS-based mineral prospectivity mapping (MPM) is a computer-aided methodology for delineating and be...
Machine Learning technologies have the potential to deliver new nonlinear mineral prospectivity mapp...
Machine learning (ML), a subfield of artificial intelligence (AI), includes computational methods to...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
In recent years, the pace of technological development has accelerated along with the demand for min...
Machine learning describes an array of computational and nested statistical methods whereby a comput...
Geoscientists have extensively used machine learning for geological mapping and exploring the minera...
Thanks to the brilliant progress in machine learning, many research works have conducted data-driven...
Mineral exploration targeting is a highly complex decision-making task. Two key risk factors, the qu...
This study aimed to model the prospectivity for placer deposits using geomorphic and landscape param...
A multilayer feed‐forward neural network, trained with a gradient descent, back‐propagation algorith...
In this contribution, we describe an application of support vector machine (SVM), a supervised learn...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
Machine learning algorithms (MLAs) such us artificial neural networks (ANNs), regression trees (RTs)...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
GIS-based mineral prospectivity mapping (MPM) is a computer-aided methodology for delineating and be...
Machine Learning technologies have the potential to deliver new nonlinear mineral prospectivity mapp...
Machine learning (ML), a subfield of artificial intelligence (AI), includes computational methods to...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
In recent years, the pace of technological development has accelerated along with the demand for min...
Machine learning describes an array of computational and nested statistical methods whereby a comput...
Geoscientists have extensively used machine learning for geological mapping and exploring the minera...
Thanks to the brilliant progress in machine learning, many research works have conducted data-driven...
Mineral exploration targeting is a highly complex decision-making task. Two key risk factors, the qu...
This study aimed to model the prospectivity for placer deposits using geomorphic and landscape param...
A multilayer feed‐forward neural network, trained with a gradient descent, back‐propagation algorith...
In this contribution, we describe an application of support vector machine (SVM), a supervised learn...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
Machine learning algorithms (MLAs) such us artificial neural networks (ANNs), regression trees (RTs)...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
GIS-based mineral prospectivity mapping (MPM) is a computer-aided methodology for delineating and be...
Machine Learning technologies have the potential to deliver new nonlinear mineral prospectivity mapp...
Machine learning (ML), a subfield of artificial intelligence (AI), includes computational methods to...