Efficient Uncertainty Propagation with Guarantees in Wasserstein Distance
Efficient Uncertainty Propagation with Guarantees in Wasserstein Distance
In this paper, we consider the problem of propagating an uncertain distribution by a possibly non-linear function and quantifying the resulting uncertainty. We measure the uncertainty using the Wasserstein distance, and for a given input set of distributions close in the Wasserstein distance, we compute a set of distributions centered at a discrete distribution that is guaranteed to contain the pushforward of any distribution in the input set. Our approach is based on approximating a nominal distribution from the input set to a discrete support distribution for which the exact computation of the pushforward distribution is tractable, thus guaranteeing computational efficiency to our approach. Then, we rely on results from semi-discrete optimal transport and distributional robust optimization to show that for any $\epsilon > 0$ the error introduced by our approach can be made smaller than $\epsilon$. Critically, in the context of dynamical systems, we show how our results allow one to efficiently approximate the distribution of a stochastic dynamical system with a discrete support distribution for a possibly infinite horizon while bounding the resulting approximation error. We empirically investigate the effectiveness of our framework on various benchmarks, including a 10-D non-linear system, showing the effectiveness of our approach in quantifying uncertainty in linear and non-linear stochastic systems.
Eduardo Figueiredo、Steven Adams、Peyman Mohajerin Esfahani、Luca Laurenti
计算技术、计算机技术自动化基础理论
Eduardo Figueiredo,Steven Adams,Peyman Mohajerin Esfahani,Luca Laurenti.Efficient Uncertainty Propagation with Guarantees in Wasserstein Distance[EB/OL].(2025-06-10)[2025-07-19].https://arxiv.org/abs/2506.08689.点此复制
评论