ASPOT achieves O(n^{7/3} ε^{-5/3}) complexity for partial optimal transport via Nesterov-accelerated alternating minimization, plus an improved gamma choice for classical Sinkhorn.
Accelerated Sinkhorn Algorithms for Partial Optimal Transport
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abstract
Partial Optimal Transport (POT) addresses the problem of transporting only a fraction of the total mass between two distributions, making it suitable when marginals have unequal size or contain outliers. While Sinkhorn-based methods are widely used, their complexity bounds for POT remain suboptimal and can limit scalability. We introduce Accelerated Sinkhorn for POT (ASPOT), which integrates alternating minimization with Nesterov-style acceleration in the POT setting, yielding a complexity of $\mathcal{O}(n^{7/3}\varepsilon^{-5/3})$. We also show that an informed choice of the entropic parameter $\gamma$ improves rates for the classical Sinkhorn method. Experiments on real-world applications validate our theories and demonstrate the favorable performance of our proposed methods.
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cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Accelerated Sinkhorn Algorithms for Partial Optimal Transport
ASPOT achieves O(n^{7/3} ε^{-5/3}) complexity for partial optimal transport via Nesterov-accelerated alternating minimization, plus an improved gamma choice for classical Sinkhorn.