A “Weighted” Geochemical Variable Classification Method Based on Latent Variables

被引:0
|
作者
Jiangtao Liu
Qiuming Cheng
Jian-Guo Wang
Yusen Dong
机构
[1] Wuhan Center,State Key Lab of Geological Processes and Mineral Resources
[2] China Geological Survey,Department of Earth and Space Science and Engineering
[3] China University of Geosciences,School of Computer Science
[4] York University,undefined
[5] China University of Geosciences,undefined
来源
Natural Resources Research | 2022年 / 31卷
关键词
Variable clustering; Clustering around latent variables (CLV); Weighted clustering; Geochemical factor extraction;
D O I
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中图分类号
学科分类号
摘要
Clustering of variables relies on relationships among them. The strength of those relationships is generally measured by the correlation coefficients between pairs of variables. This paper proposes specified variable weighted correlation coefficients and takes the clustering around latent variables (CLV) approach as an example to transform the common clustering method into a “weighted” clustering method. The aim is to eliminate factors that are unrelated to the variable that was adopted for weighting to ensure that the cluster centers are sufficiently different and have good correlations with the adopted variable. A log-transformed dataset was used to evaluate the proposed method. Three clusters were obtained under the restriction of the As element, and they represented three ore-controlling factors related to the Goldenville Formation, namely geologic features such as formation, fault contacts, and granitoid intrusions. Not only did the new cluster centers account for most of the variability related to the weighted element (As) but they also showed significant differences in spatial distributions.
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页码:1925 / 1941
页数:16
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