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首页> 外文期刊>Ore Geology Reviews: Journal for Comprehensive Studies of Ore Genesis and Ore Exploration >Selection of coherent deposit-type locations and their application data-driven mineral prospectivity mapping
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Selection of coherent deposit-type locations and their application data-driven mineral prospectivity mapping

机译:相干矿床类型位置的选择及其应用数据驱动的矿物远景图

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Data-driven prospectivity mapping can be undermined by dissimilarity in multivariate spatial data signatures of deposit-type locations. Most cases of data-driven prospectivity mapping, however, make use of training sets of randomly selected deposit-type locations with the implicit assumption that they are coherent (i.e., with similar multivariate spatial data signatures). This study shows that the quality of data-driven prospectivity mapping can be improved by using a training set of coherent deposit-type locations. Analysis and selection of coherent deposit-type locations was performed via logistic regression, by using multiple sets of deposit occurrence favourability scores of univariate geoscience spatial data as independent variables and binary deposit occurrence scores as dependent variable. The set of coherent d'eposit-type locations and three sets of randomly selected deposit-type locations were each used in data-driven prospectivity mapping via application of evidential belief functions. The prospeclivity map based on the training set of coherent deposit-type locations resulted in lower uncertainty, better goodness-of-fit to the training set, and better predictive capacity against a cross-validation set of economic deposits of the type sought. This study shows that explicit selection of training set of coherent deposit-type locations should be applied in data-driven prospectivity mapping.
机译:存款类型位置的多元空间数据签名中的差异可能会破坏数据驱动的前瞻性映射。但是,大多数数据驱动的前瞻性映射的情况都是利用随机选择的存款类型位置的训练集,并隐含地假设它们是连贯的(即具有相似的多元空间数据签名)。这项研究表明,通过使用相关的存款类型位置的训练集,可以提高数据驱动的前瞻图的质量。通过使用单变量地球科学空间数据的多套矿床发生有利性得分作为自变量和将二元矿床发生得分作为因变量,通过逻辑回归进行相关的矿床类型位置的分析和选择。通过应用证据置信函数,在数据驱动的前瞻性制图中使用了一组相干的d'沉积类型位置和三组随机选择的沉积类型位置。基于相干存款类型位置的训练集的前瞻性图导致较低的不确定性,对训练集的拟合优度以及对所寻求类型的经济存款的交叉验证集的更好预测能力。这项研究表明,在数据驱动的前瞻性制图中应明确选择相关沉积类型位置训练集。

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