Longitudinal Flow Matching for Trajectory Modeling
About
Generative models for sequential data often struggle with sparsely sampled and high-dimensional trajectories, typically reducing the learning of dynamics to pairwise transitions. We propose Interpolative Multi-Marginal Flow Matching (IMMFM), a framework that learns continuous stochastic dynamics jointly consistent with multiple observed time points. IMMFM employs a piecewise-quadratic interpolation path as a smooth target for flow matching and jointly optimizes drift and a data-driven diffusion coefficient, supported by a theoretical condition for stable learning. This design captures intrinsic stochasticity, handles irregular sparse sampling, and yields subject-specific trajectories. Experiments on synthetic benchmarks and real-world longitudinal neuroimaging datasets show that IMMFM outperforms existing methods in both forecasting accuracy and further downstream tasks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Transport | NeuralTable widefield Ca2+ imaging (12 mice, 451-d, 22 marginals) | 1-hop WD0.001 | 7 | |
| Trajectory Inference | Embryoid body differentiation T = 5 timepoints, 3 stages | 1-hop WD0.128 | 7 | |
| Transport modeling | Lorenz attractor M=24, T=8, R=2 regime blocks | 1-hop Wasserstein Distance1.02 | 6 |