Optimal transport (OT) plays an essential role in various areas like machine learning and deep learning. However, computing discrete optimal transport plan for large scale problems with adequate accuracy and efficiency is still highly challenging. Recently, methods based on the Sinkhorn algorithm add an entropy regularizer to the prime problem and get a trade off between efficiency and accuracy. In this paper, we propose a novel algorithm to further improve the efficiency and accuracy based on Nesterov's smoothing technique. Basically, the non-smooth c-transform of the Kantorovich potential is approximated by the smooth Log-Sum-Exp function, which finally smooths the original non-smooth Kantorovich dual functional (energy). The smooth Kantorovich functional can be optimized by the fast proximal gradient algorithm (FISTA) efficiently. Theoretically, the computational complexity of the proposed method is given by $O(n^{\frac{5}{2}} \sqrt{\log n} /\epsilon)$, which is lower than that of the Sinkhorn algorithm. Empirically, compared with the Sinkhorn algorithm, our experimental results demonstrate that the proposed method achieves faster convergence and better accuracy with the same parameter.


翻译:最佳运输(OT)在机器学习和深层次学习等各个领域发挥着必不可少的作用。然而,计算离散的最佳运输计划,以充分准确和效率地解决大规模问题,仍然极具挑战性。最近,基于Sinkhorn 算法的方法在质质问题中添加了酶正度调节器,并在效率和准确性之间实现平衡。在本文中,我们提出了一个新的算法,以根据Nesterov的平滑技术进一步提高效率和准确性。基本上,堪托罗维奇潜力的非moth ctraxfym 由平滑的Log-Sum-Exaction功能所近似,该功能最终平滑了原非mooth Kantorovich 双功能(能源) 。光滑的Kantorovich 功能可以通过快速准度梯度算法(FISTA) 有效优化。理论上,拟议方法的计算复杂性由$O(náfrac {5 ⁇ 2 ⁇ \\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\slon)来给出,该值低于Sinkhorovich 平调的逻辑算算法,该功能,该功能,该功能比Sinkhormaxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx),该方法的计算结果更快, 来显示我们的实验率。与Sinkh) 和Sxxxxxxxxxxxxxxxx。

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