菲律宾碧瑶地区金矿潜力地质约束填图的逻辑回归

E. Carranza, M. Hale
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引用次数: 113

摘要

逻辑回归在菲律宾碧瑶地区金矿潜力测绘中的应用。在空间关联分析的基础上,对岩性单元和曲线线性特征邻近类等分类图数据进行系统量化,并将其作为逻辑回归中的自变量,用于预测金矿化存在或不存在的概率。进行回归实验,比较使用与响应变量在空间上相关的所有自变量和仅使用统计上显著的自变量之间的差异。回归实验的结果是相似的;然而,使用所有自变量的结果略乐观,但对试验区已知金矿的预测率较好。至少68%的“模型”大型金矿和至少76%的“验证”小型金矿被正确预测。预测的地质有利带也与圈定的地球化学异常带相似。利用逻辑回归作为数据集成工具,提出了一种有效的地质约束条件下的矿产潜力填图技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Logistic regression for geologically constrained mapping of gold potential, Baguio district, Philippines
An application of logistic regression to mapping of gold potential in the Baguio district of the Philippines is described. Categorical map data such as lithologic units and proximity classes of curvi-linear features, based on spatial association analyses, are quantified systematically and used as independent variables in logistic regression to predict the probability for presence or absence of gold mineralization. Regression experiments to compare between using all independent variables that are associated spatially with the response variable and using only statistically significant independent variables are performed. The results of the regression experiments are similar; however, the use of all independent variables produces slightly optimistic results but better prediction rates for the known gold deposits in the test district. At least 68% of the ‘model’ large-scale gold deposits and at least 76% of the ‘validation’ small-scale gold deposits were predicted correctly. The predicted geologically favorable zones are also similar to delineated geochemically anomalous zones. The technique presented using logistic regression as a data integration tool is effective for geologically constrained technique of mapping mineral potential.
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