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Learning to Emulate Chaos: Adversarial Optimal Transport Regularization
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이 매체는 공공·자유 라이선스로 본문을 직접 표시합니다.Statistics > Machine Learning
[Submitted on 22 Apr 2026 (v1), last revised 18 Jun 2026 (this version, v2)]
Title:Learning to Emulate Chaos: Adversarial Optimal Transport Regularization
View PDF HTML (experimental)Abstract:Chaos arises in many complex dynamical systems, from weather to power grids, but is difficult to accurately model with data-driven methods such as machine learning emulators. While emulators are promising tools for accelerating simulations and solving inverse problems, they still struggle to learn chaotic dynamics, where sensitivity to initial conditions renders exact long-term forecasts infeasible, especially given noisy data. Recent work instead trains emulators to match the statistical properties of chaotic attractors, but these approaches often rely on handcrafted summary statistics or large, diverse multi-environment datasets. In this work, we propose a family of adversarial optimal transport objectives that can jointly learn high-quality summary statistics and a physically consistent emulator from a single noisy trajectory. We theoretically analyze and experimentally validate a Sinkhorn divergence formulation (2-Wasserstein) and a WGAN-style dual formulation (1-Wasserstein) of our approach. Numerical experiments across a variety of chaotic systems, including ones with high-dimensional spatiotemporal chaos, show that emulators trained using our proposed objectives have significantly improved long-term statistical fidelity.
Submission history
From: Leonardo Santiago [view email][v1] Wed, 22 Apr 2026 21:34:06 UTC (29,465 KB)
[v2] Thu, 18 Jun 2026 14:31:54 UTC (10,081 KB)
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