Multiscale Supervised Unbalanced Optimal Transport Flow Matching
About
Unbalanced optimal transport (UOT) provides a principled framework for modeling single-cell transitions and birth-death dynamics, but its high computational cost limits scalability to large-scale datasets. Although single-cell data often contain hierarchical annotations and known transition priors, existing UOT approximations rarely exploit this multiscale structure or prior knowledge. We introduce Multiscale Supervised Unbalanced Optimal Transport Flow Matching (MUST-FM), a simulation-free framework that scales UOT by leveraging hierarchical data structure. MUST-FM further supports an optional supervised formulation that incorporates transition priors, such as cell lineages, to guide the learning of displacement fields and mass variations. Experiments show that MUST-FM reduces computational overhead while achieving robust and biologically meaningful trajectory inference, enabling dynamic modeling of atlas-scale single-cell datasets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Trajectory reconstruction | Gaussian Mixtures 1000D | W1 Distance2.212 | 18 | |
| Unbalanced Trajectory Modeling | EB 50D | W16.155 | 6 | |
| Unbalanced Trajectory Modeling | GENE 2D | W1 Metric0.019 | 6 | |
| Unbalanced Trajectory Modeling | Mouse 2D | W10.045 | 6 |