DSNANAMar 17

A Jacobi Field Approach to Splitting Detection in Schrödinger Bridge

arXiv:2603.166180.16h-index: 15
AI Analysis50

This addresses a subtle challenge in stochastic control and Schrödinger bridge theory for researchers in these fields, representing an incremental advancement.

The paper tackles the problem of detecting path splitting in stochastic interpolation between probability distributions, especially for nonconvex or disconnected targets, by proposing a Jacobi field based indicator that localizes branching regions and captures temporal splitting development in numerical experiments.

We study the problem of detecting the onset of path splitting in stochastic interpolation between probability distributions. This question is especially subtle when the target distribution is nonconvex or supported on disconnected components, where interpolating trajectories may separate into distinct branches. Motivated by the stochastic control and Schrödinger bridge viewpoint, we propose a Jacobi field based indicator for identifying candidate splitting times and locations. Our approach is based on the Jacobi field associated with the linearization of an induced interpolating flow. Starting from a stochastic interpolation ansatz, we construct an Eulerian velocity field by conditional averaging and derive its spatial Jacobian in terms of the local posterior geometry of the target sample cloud. This allows us to interpret the symmetric part of the Jacobian as a local strain tensor and to use its spectral structure to quantify the amplification of infinitesimal perturbations along reference trajectories. Numerical experiments on non-convex and disconnected target distributions show that the proposed indicator consistently localizes the emergence of branching regions and captures the temporal development of splitting. These results suggest that Jacobi field analysis provides a natural mathematical framework for studying local instability and splitting phenomena in stochastic interpolation.

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