Identifying Drift, Diffusion, and Causal Structure from Temporal Snapshots

arXiv stat.ML / 4/2/2026

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Key Points

  • The paper introduces a first comprehensive framework to jointly identify an SDE’s drift and diffusion using only temporal marginals, motivated by settings like single-cell temporal data where full trajectories are unobserved.
  • Under the assumptions of linear drift and additive diffusion, it proves that drift/diffusion non-identifiability can only occur when the initial distribution has generalized rotational symmetries, and that otherwise the parameters are almost always recoverable.
  • It further establishes that the causal graph of an SDE with additive diffusion can be recovered from the identified drift and diffusion parameters.
  • To support practical estimation, the authors adapt entropy-regularized optimal transport for anisotropic diffusion and propose APPEX (Alternating Projection Parameter Estimation from X0), an iterative algorithm that decreases KL divergence toward the true SDE on simulated linear additive-noise examples.

Abstract

Stochastic differential equations (SDEs) are a fundamental tool for modelling dynamic processes, including gene regulatory networks (GRNs), contaminant transport, financial markets, and image generation. However, learning the underlying SDE from data is a challenging task, especially if individual trajectories are not observable. Motivated by burgeoning research in single-cell datasets, we present the first comprehensive approach for jointly identifying the drift and diffusion of an SDE from its temporal marginals. Assuming linear drift and additive diffusion, we show that non-identifiability can only arise if the initial distribution possesses generalized rotational symmetries. We further prove that even if this condition holds, the drift and diffusion can almost always be recovered from the marginals. Additionally, we show that the causal graph of any SDE with additive diffusion can be recovered from the identified SDE parameters. To complement this theory, we adapt entropy-regularized optimal transport to handle anisotropic diffusion, and introduce APPEX (Alternating Projection Parameter Estimation from X_0), an iterative algorithm designed to estimate the drift, diffusion, and causal graph of an additive noise SDE, solely from temporal marginals. We show that APPEX iteratively decreases Kullback-Leibler divergence to the true solution, and demonstrate its effectiveness on simulated data from linear additive noise SDEs.