MLLGSep 15, 2025

E-ROBOT: a dimension-free method for robust statistics and machine learning via Schrödinger bridge

arXiv:2509.11532v1h-index: 7
Originality Incremental advance
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This provides a robust, scalable tool for high-dimensional machine learning tasks, though it builds incrementally on existing ROBOT and entropic regularization methods.

The paper tackles the curse of dimensionality in robust statistics by proposing E-ROBOT, a dimension-free method based on the Schrödinger bridge, achieving a sample complexity of O(n^{-1/2}) and demonstrating applications in tasks like shape barycenters and image colour transfer.

We propose the Entropic-regularized Robust Optimal Transport (E-ROBOT) framework, a novel method that combines the robustness of ROBOT with the computational and statistical benefits of entropic regularization. We show that, rooted in the Schrödinger bridge problem theory, E-ROBOT defines the robust Sinkhorn divergence $\overline{W}_{\varepsilon,λ}$, where the parameter $λ$ controls robustness and $\varepsilon$ governs the regularization strength. Letting $n\in \mathbb{N}$ denote the sample size, a central theoretical contribution is establishing that the sample complexity of $\overline{W}_{\varepsilon,λ}$ is $\mathcal{O}(n^{-1/2})$, thereby avoiding the curse of dimensionality that plagues standard ROBOT. This dimension-free property unlocks the use of $\overline{W}_{\varepsilon,λ}$ as a loss function in large-dimensional statistical and machine learning tasks. With this regard, we demonstrate its utility through four applications: goodness-of-fit testing; computation of barycenters for corrupted 2D and 3D shapes; definition of gradient flows; and image colour transfer. From the computation standpoint, a perk of our novel method is that it can be easily implemented by modifying existing (\texttt{Python}) routines. From the theoretical standpoint, our work opens the door to many research directions in statistics and machine learning: we discuss some of them.

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