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Using Linearized Optimal Transport to Predict the Evolution of Stochastic Particle Systems

Abstract

We develop an algorithm to approximate the time evolution of a probability distribution without explicitly learning an operator that governs the evolution. A particular application of interest is discrete measures μtN\mu_t^N that arise from systems of NN particles in Rd\mathbb R^d. In many such situations, the individual particles move chaotically on short time scales, making it difficult to learn the dynamics of a governing operator, but the bulk distribution μtN\mu_t^N approximates an absolutely continuous measure μt\mu_t that evolves ``smoothly.'' If μt\mu_t is known on some time interval, then linearized optimal transport theory provides an Euler-like scheme for approximating the evolution of μt\mu_t using its ``tangent vector field'' (represented as a time-dependent vector field on Rd\mathbb R^d), which can be computed as a limit of optimal transport maps. We propose an analog of this Euler approximation to predict the evolution of the discrete measure μtN\mu_t^N (without knowing μt\mu_t). To approximate the analogous tangent vector field, we use a finite difference over a time step that sits between two time scales of the system -- long enough for a large-NN evolution (μt\mu_t) to emerge but short enough to satisfactorily approximate the derivative object used in the Euler scheme. The emergence of the limiting behavior ensures the optimal transport maps closely approximate the vector field describing the bulk distribution's smooth evolution instead of the individual particles' more chaotic movements. We demonstrate the efficacy of our approach with two illustrative examples, Gaussian diffusion and a cell chemotaxis model, and show that our method succeeds in predicting the bulk behavior over relatively large steps.

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