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首页> 外文期刊>SIAM Journal on Applied Mathematics >ENTROPIC AND DISPLACEMENT INTERPOLATION: A COMPUTATIONAL APPROACH USING THE HILBERT METRIC
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ENTROPIC AND DISPLACEMENT INTERPOLATION: A COMPUTATIONAL APPROACH USING THE HILBERT METRIC

机译:熵和位移插值:一种使用希尔伯特度量的计算方法

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摘要

Monge-Kantorovich optimal mass transport (OMT) provides a blueprint for geometries in the space of positive densities it quantifies the cost of transporting a mass distribution into another. In particular, it provides natural options for interpolation of distributions (displacement interpolation) and for modeling flows. As such it has been the cornerstone of recent developments in physics, probability theory, image processing, time-series analysis, and several other fields. In spite of extensive work and theoretical developments, the computation of OMT for large-scale problems has remained a challenging task. An alternative framework for interpolating distributions, rooted in statistical mechanics and large deviations, is that of the Schrodinger bridge problem (SBP), which leads to entropic interpolation. SBP may be seen as a stochastic regularization of OMT, and can be cast as the stochastic control problem of steering the probability density of the state-vector of a dynamical system between two marginals. The actual computation of entropic flows, however, has received hardly any attention. In our recent work on Schrodinger bridges for Markov chains and quantum channels, we showed that the solution can be efficiently obtained from the fixed point of a map which is contractive in the Hilbert metric. Thus, the purpose of this paper is to show that a similar approach can be taken in the context of diffusion processes which (i) leads to a new proof of a classical result on SBP and (ii) provides an efficient computational scheme for both SBP and OMT. We illustrate this new computational approach by obtaining interpolation of densities in representative examples such as interpolation of images.
机译:Monge-Kantorovich最佳质量传输(OMT)为正密度空间中的几何图形提供了蓝图,它量化了将质量分布传输到另一个空间中的成本。特别是,它为分布的插值(位移插值)和流程建模提供了自然的选择。因此,它一直是物理学,概率论,图像处理,时间序列分析和其他几个领域最新发展的基石。尽管有大量的工作和理论上的发展,但针对大规模问题的OMT的计算仍然是一项艰巨的任务。根植于统计力学和大偏差的插值分布的另一种框架是薛定inger桥问题(SBP)的框架,它导致熵插值。 SBP可以看作是OMT的随机正则化,可以看作是控制两个边际之间的动力学系统的状态向量的概率密度的随机控制问题。然而,熵流的实际计算几乎没有受到关注。在我们最近的关于马尔可夫链和量子通道的薛定inger桥的研究中,我们表明可以从映射的固定点有效地获得解,而该映射点的希尔伯特度量是收缩的。因此,本文的目的是表明可以在扩散过程的背景下采取类似的方法,该方法(i)导致SBP经典结果的新证明,并且(ii)为两种SBP提供有效的计算方案和OMT。我们通过在代表性示例(例如图像插值)中获得密度插值来说明这种新的计算方法。

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