4.7 Article

Constructing a high-performance self-training model based on support vector classifiers to detect gold mineralization-related geochemical anomalies for gold exploration targeting

Journal

ORE GEOLOGY REVIEWS
Volume 153, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.oregeorev.2022.105265

Keywords

Self-training; Support vector classification; Logistic regression; Dictionary learning; Geochemical anomaly detection; Mineral exploration targeting

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Both anomaly detection algorithms and supervised classification algorithms can be used to detect mineralization-related geochemical anomalies in areas with discovered mineral deposits. However, neither of these models perform well due to their limitations in utilizing known mineral deposits as supervisors or handling extreme class-imbalance in geochemical exploration data. Therefore, a self-training model based on support vector classifiers was adopted and outperformed other models in detecting gold mineralization-related geochemical anomalies.
In an area where mineral deposits have been discovered, both anomaly detection algorithms and supervised classification algorithms can be adopted to detect mineralization-related geochemical anomalies for mineral exploration targeting. However, anomaly detection algorithms themselves cannot use known mineral deposits as the supervisors to improve the performance of geochemical anomaly detection models. Supervised classification algorithms can not properly deal with the extreme class-imbalance of geochemical exploration data in the establishment of classification models. Therefore, neither anomaly detection models nor supervised classification models perform well in the detection of mineralization-related geochemical anomalies. In order to obtain a highperformance mineral exploration targeting model, the self-training algorithm was adopted to construct a self training model based on support vector classifiers to detect gold mineralization-related geochemical anomalies in the Chengde area in Hebei Province (China). The self-training model was compared with the support vector classification model, logistic regression model and five dictionary learning models in terms of area under the curve (AUC) and lift index. The AUC value of the self-training model (0.89) is much higher than those of the two supervised classification models (0.81-0.82) and five anomaly detection models (0.79-0.81). The lift index of the self-training model (11.87) is also much higher than those of the two supervised classification models (2.77-4.04) and five anomaly detection models (2.64-3.48). Therefore, the self-training model performs much better than the two supervised classification models and five anomaly detection models in the detection of gold mineralization-related geochemical anomalies. The gold mineralization-related geochemical anomalies detected by the self-training model highly conform to the metallogenic and geological features in the study area. Therefore, it is a prospective method to establish a self-training model to detect mineralization-related geochemical anomalies in an area where mineral deposits have been discovered.

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