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Interior-point Methods Strike Back: Solving the Wasserstein Barycenter Problem

机译:内部点方法罢工:解决Wassersein重心问题

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Computing the Wasserstein barycenter of a set of probability measures under the optimal transport metric can quickly become prohibitive for traditional second-order algorithms, such as interior-point methods, as the support size of the measures increases. In this paper, we overcome the difficulty by developing a new adapted interior-point method that fully exploits the problem's special matrix structure to reduce the iteration complexity and speed up the Newton procedure. Different from regularization approaches, our method achieves a well-balanced tradeoff between accuracy and speed. A numerical comparison on various distributions with existing algorithms exhibits the computational advantages of our approach. Moreover, we demonstrate the practicality of our algorithm on image benchmark problems including MNIST and Fashion-MNIST.
机译:计算在最佳运输度量下的一组概率测量的Wassersein Barycenter可以迅速对传统的二阶算法(例如内部点方法)迅速变为禁止,因为措施的支持大小增加。 在本文中,我们通过开发一种新的适应性内部点方法来克服难以利用问题的特殊矩阵结构来降低迭代复杂性并加快牛顿程序。 与正规化方法不同,我们的方法在准确性和速度之间实现了均衡的权衡。 具有现有算法的各种分布的数值比较表现出我们方法的计算优势。 此外,我们展示了我们对图像基准问题的实用性,包括Mnist和Fashion-Mnist。

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