By adding entropic regularization, multi-marginal optimal transport problems can be transformed into tensor scaling problems, which can be solved numerically using the multi-marginal Sinkhorn algorithm. The main computational bottleneck of this algorithm is the repeated evaluation of marginals. Recently, it has been suggested that this evaluation can be accelerated when the application features an underlying graphical model. In this work, we accelerate the computation further by combining the tensor network dual of the graphical model with additional low-rank approximations. We provide an example for the color transfer between several images, in which these additional low-rank approximations save more than 96% of the computation time.
翻译:通过添加成文法化,多边最佳运输问题可以转化成压力缩放问题,这可以通过多边Sinkhorn算法从数字上加以解决。这种算法的主要计算瓶颈是边际的反复评估。最近,有人提议,当应用程序包含一个基本图形模型时,这种评估可以加速进行。在这项工作中,我们进一步加快计算,将图形模型的振幅网络双倍与额外的低级近似值结合起来。我们为若干图像之间的颜色传输提供了一个范例,在这些图像中,这些额外的低级近似值节省了96%的计算时间。