MST-Direct: Matching via Sinkhorn Transport for Multivariate Geostatistical Simulation with Complex Non-Linear Dependencies
arXiv cs.LG / 3/20/2026
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Key Points
- Researchers propose MST-Direct (Matching via Sinkhorn Transport), a novel algorithm based on Optimal Transport that uses the Sinkhorn algorithm to directly match multivariate distributions while preserving spatial correlation structures in geostatistical data.
- The approach addresses limitations of traditional methods like Gaussian Copula and LU Decomposition, which assume linear correlations and often fail to reproduce complex non-linear dependencies such as bimodal distributions, step functions, and heteroscedastic relationships.
- MST-Direct processes all variables simultaneously as a single multidimensional vector, enabling relational matching across the full joint space rather than relying on pairwise linear dependencies.
- By preserving intricate joint patterns and spatial correlations, the method aims to improve realism and fidelity in multivariate geostatistical simulations.
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