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Neural Optimal Transport in Hilbert Spaces: Characterizing Spurious Solutions and Gaussian Smoothing

About

We study Neural Optimal Transport in infinite-dimensional Hilbert spaces. In non-regular settings, Semi-dual Neural OT often generates spurious solutions that fail to accurately capture target distributions. We analytically characterize this spurious solution problem using the framework of regular measures, which generalize Lebesgue absolute continuity in finite dimensions. To resolve ill-posedness, we extend the semi-dual framework via a Gaussian smoothing strategy based on Brownian motion. Our primary theoretical contribution proves that under a regular source measure, the formulation is well-posed and recovers a unique Monge map. Furthermore, we establish a sharp characterization for the regularity of smoothed measures, proving that the success of smoothing depends strictly on the kernel of the covariance operator. Empirical results on synthetic functional data and time-series datasets demonstrate that our approach effectively suppresses spurious solutions and outperforms existing baselines.

Jae-Hwan Choi, Jiwoo Yoon, Dohyun Kwon, Jaewoong Choi• 2026

Related benchmarks

TaskDatasetResultRank
Time Series ImputationETTm1
MSE0.066
110
Time Series ImputationETTh1
MSE0.215
86
Time Series ImputationETTm2
MSE0.021
83
Time Series ImputationExchange
MSE0.004
54
Unpaired time-series imputationETTh2
MSE0.048
13
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