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t-SNE Based Visualisation and Clustering of Geological Domain

机译:基于t-SNE的地质领域可视化与聚类

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Identification of geological domains and their boundaries plays a vital role in the estimation of mineral resources. Geologists are often interested in exploratory data analysis and visualization of geological data in two or three dimensions in order to detect quality issues or to generate new hypotheses. We compare PCA and some other linear and non-linear methods with a newer method, t-Distributed Stochastic Neighbor Embedding (t-SNE) for the visualization of large geochemical assay datasets. The t-SNE based reduced dimensions can then be used with clustering algorithm to extract well clustered geological regions using exploration and production datasets. Significant differences between the nonlinear method t-SNE and the state of the art methods were observed in two dimensional target spaces.
机译:地质区域及其边界的确定在矿产资源的估算中起着至关重要的作用。地质学家通常对探索性数据分析和二维或三个维度的地质数据可视化感兴趣,以便发现质量问题或产生新的假设。我们将PCA以及其他一些线性和非线性方法与更新方法t分布随机邻居嵌入(t-SNE)进行了比较,以可视化大型地球化学分析数据集。然后,可以将基于t-SNE的缩小尺寸与聚类算法一起使用,以使用勘探和生产数据集提取聚类良好的地质区域。在二维目标空间中,观察到了非线性方法t-SNE与现有技术方法之间的显着差异。

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