A new strategy for spatial predictive mapping of mineral prospectivity: Automated hyperparameter tuning of random forest approach

Machine learning algorithms (e.g., random forest (RF)) have recently been performed in data-driven mineral prospectivity mapping. These methods are highly sensitive to hyperparameter values, since the predictive accuracy of them can significantly increase when the optimized hyperparameters are prede...

Full description

Saved in:
Bibliographic Details
Published inComputers & geosciences Vol. 148; p. 104688
Main Authors Daviran, Mehrdad, Maghsoudi, Abbas, Ghezelbash, Reza, Pradhan, Biswajeet
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.03.2021
Subjects
Online AccessGet full text
ISSN0098-3004
1873-7803
DOI10.1016/j.cageo.2021.104688

Cover

More Information
Summary:Machine learning algorithms (e.g., random forest (RF)) have recently been performed in data-driven mineral prospectivity mapping. These methods are highly sensitive to hyperparameter values, since the predictive accuracy of them can significantly increase when the optimized hyperparameters are predefined and then adjusted to training procedure. The main goal of this contribution is to propose a hybrid genetic-based RF model, namely GRF, which is able to automatically adjust the optimized hyperparameters of RF with the excellent predictive accuracy. Therefore, three primary parameters of RF comprising NT, NS and d, were well-tuned employing genetic algorithm (GA) in establishing an efficient RF model. The proposed GRF model and also conventional RF were tested on mineralization-related geo-spatial dataset and the predictive models were generated for comparing the accuracy of the proposed GRF model with that of RF. The input dataset (e.g., multi-element geochemical signature, geological-structural layer and hydrothermal alteration evidences) which acquired from Feizabad district, NE Iran, were translated into mappable targeting criteria in the form of four predictor maps. In addition, the locations of 13 known Cu–Au deposits as prospect data and the locations of 13 randomly selected non-prospect data were used as target variables to train the models. Three authentic validation measures, K-fold cross-validation, confusion matrix and success-rate curves, were employed to evaluate the overall performance of two predictive models. Experimental results suggested the superiority of GRF model over the RF, as the favorable areas derived by GRF model occupy only 9% of the study area while predicting 100% of the known deposits. •Propose a hybrid genetic-based random forest model, namely GRF, for automatically tuning and adjusting the hyperparameters of RF to be used in mineral prospectivity mapping (MPM).•The performance of GRF was compared to conventional RF (CRF).•K-fold cross-validation, confusion matrix and success-rate curves employed to evaluate the overall performance of two predictive models.•Experimental results affirmed the superiority of GRF model over the CRF for MPM.
Bibliography:ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 23
ISSN:0098-3004
1873-7803
DOI:10.1016/j.cageo.2021.104688