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Oh SnapMMD! Forecasting Stochastic Dynamics Beyond the Schr\"odinger Bridge's End

About

Scientists often want to make predictions beyond the observed time horizon of "snapshot" data following latent stochastic dynamics. For example, in time course single-cell mRNA profiling, scientists have access to cellular transcriptional state measurements (snapshots) from different biological replicates at different time points, but they cannot access the trajectory of any one cell because measurement destroys the cell. Researchers want to forecast (e.g.) differentiation outcomes from early state measurements of stem cells. Recent Schr\"odinger-bridge (SB) methods are natural for interpolating between snapshots. But past SB papers have not addressed forecasting -- likely since existing methods either (1) reduce to following pre-set reference dynamics (chosen before seeing data) or (2) require the user to choose a fixed, state-independent volatility since they minimize a Kullback-Leibler divergence. Either case can lead to poor forecasting quality. In the present work, we propose a new framework, SnapMMD, that learns dynamics by directly fitting the joint distribution of both state measurements and observation time with a maximum mean discrepancy (MMD) loss. Unlike past work, our method allows us to infer unknown and state-dependent volatilities from the observed data. We show in a variety of real and synthetic experiments that our method delivers accurate forecasts. Moreover, our approach allows us to learn in the presence of incomplete state measurements and yields an $R^2$-style statistic that diagnoses fit. We also find that our method's performance at interpolation (and general velocity-field reconstruction) is at least as good as (and often better than) state-of-the-art in almost all of our experiments.

Renato Berlinghieri, Yunyi Shen, Jialong Jiang, Tamara Broderick• 2025

Related benchmarks

TaskDatasetResultRank
Trajectory InterpolationLight V1
W1 Error2.42
18
Trajectory InterpolationDendritic Stimulus
W1 Distance/Error3.863
18
Trajectory InterpolationLung Tumor
W12.237
18
Population Dynamics InterpolationGulf of Mexico small vortex (Interpolation)
Error (t=2)0.051
11
Population Dynamics ForecastingGulf of Mexico big vortex (Forecast)
Metric at t11 (vs t0)0.896
3
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