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arxiv: 2509.06702 · v1 · pith:I35ZHRAAnew · submitted 2025-09-08 · 💻 cs.LG · q-fin.CP

Nested Optimal Transport Distances

classification 💻 cs.LG q-fin.CP
keywords optimaltransportdecision-makingdistancefinancialgenerativenestedseries
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Simulating realistic financial time series is essential for stress testing, scenario generation, and decision-making under uncertainty. Despite advances in deep generative models, there is no consensus metric for their evaluation. We focus on generative AI for financial time series in decision-making applications and employ the nested optimal transport distance, a time-causal variant of optimal transport distance, which is robust to tasks such as hedging, optimal stopping, and reinforcement learning. Moreover, we propose a statistically consistent, naturally parallelizable algorithm for its computation, achieving substantial speedups over existing approaches.

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