Bayesian mapping of regionally grouped, sparse, univariate earth science data
Some earth science data are naturally grouped by region, and it is often desirable to map these data by region. However, if there are only a few samples within each region, then the map should be smoothed in an appropriate way to mitigate the problems that arise from having only a few samples. A smoothing algorithm based on a Bayesian hierarchical model is developed and presented in this report. This algorithm has several features that make it especially suitable for mapping earth science data: it can account for measurements that are censored, it can process multiple datasets with different measurement errors and different censoring thresholds, and it can calculate the uncertainty in any statistic that is mapped. The algorithm is demonstrated by mapping gold concentrations that are measured in streambed sediments in the Taylor Mountains quadrangle in southwestern Alaska.
Citation Information
Publication Year | 2025 |
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Title | Bayesian mapping of regionally grouped, sparse, univariate earth science data |
DOI | 10.3133/tm7C29 |
Authors | Karl J. Ellefsen, Bronwen Wang, Margaret A. Goldman |
Publication Type | Report |
Publication Subtype | USGS Numbered Series |
Series Title | Techniques and Methods |
Series Number | 7-C29 |
Index ID | tm7C29 |
Record Source | USGS Publications Warehouse |
USGS Organization | Geology, Geophysics, and Geochemistry Science Center |