The fundamental origins of metamorphic rocks as sedimentary or igneous are integral to the proper interpretation of a terrane’s tectonic and geodynamic evolution. In some cases, the protolith class cannot be determined from field relationships, texture, and/or compositional layering. In this study, we utilize machine learning to predict a metamorphic protolith from its major element chemistry so that accurate interpretation of the geology may proceed when the origin is uncertain or to improve confidence in field predictions. We survey the efficacy of several machine learning techniques to predict the protolith class (igneous or sedimentary) for whole rock geochemical analyses using 9 major oxides. The data are drawn from a global geochemica...
Biplot diagrams are traditionally used for rock discrimination using geochemical data from samples. ...
This is the author accepted manuscript. The final version is available on open access from Elsevier ...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
Metasomatism occurs when fluid interacts with rock to add, or remove, its chemical constituents; the...
Global major element geochemical data for igneous and sedimentary rocks. This dataset is used to tr...
Machine learning (ML), a subfield of artificial intelligence (AI), includes computational methods to...
The major-element chemical composition of garnet provides valuable petrogenetic information, particu...
Data Set S1 presents the complete working dataset of biotite composition. This dataset has been used...
A current mineral exploration focus is the development of tools to identify magmatic districts predi...
Rocks in metalliferous ore deposits are typically classified as either ore or waste rock. An alterna...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
Garnet chemistry provides a well-established tool in the discrimination and interpretation of sedime...
Classification algorithms were constructed based on pyrite trace elements using two machine learning...
Attempts using geochemical data to classify quarry sources which provided reactive rock aggregate, c...
Biplot diagrams are traditionally used for rock discrimination using geochemical data from samples. ...
This is the author accepted manuscript. The final version is available on open access from Elsevier ...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
Metasomatism occurs when fluid interacts with rock to add, or remove, its chemical constituents; the...
Global major element geochemical data for igneous and sedimentary rocks. This dataset is used to tr...
Machine learning (ML), a subfield of artificial intelligence (AI), includes computational methods to...
The major-element chemical composition of garnet provides valuable petrogenetic information, particu...
Data Set S1 presents the complete working dataset of biotite composition. This dataset has been used...
A current mineral exploration focus is the development of tools to identify magmatic districts predi...
Rocks in metalliferous ore deposits are typically classified as either ore or waste rock. An alterna...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
Garnet chemistry provides a well-established tool in the discrimination and interpretation of sedime...
Classification algorithms were constructed based on pyrite trace elements using two machine learning...
Attempts using geochemical data to classify quarry sources which provided reactive rock aggregate, c...
Biplot diagrams are traditionally used for rock discrimination using geochemical data from samples. ...
This is the author accepted manuscript. The final version is available on open access from Elsevier ...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...