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Distributed Flow Algorithms for Scalable Similarity Visualization

机译:用于可扩展相似性可视化的分布式流算法

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We describe simple yet scalable and distributed algorithms for solving the maximum flow problem and its minimum cost flow variant, motivated by problems of interest in objects similarity visualization. We formulate the fundamental problem as a convex-concave saddle point problem. We then show that this problem can be efficiently solved by a first order method or by exploiting faster quasi-Newton steps. Our proposed approach costs at most O(|E|) per iteration for a graph with |E| edges. Further, the number of required iterations can be shown to be independent of number of edges for the first order approximation method. We present experimental results in two applications: mosaic generation and color similarity based image layouting.
机译:我们描述了用于解决最大流量问题及其最小成本流量变量的简单而可扩展的分布式算法,这些算法是由对象相似性可视化中的关注问题引起的。我们将基本问题表述为凸凹鞍点问题。然后,我们表明可以通过一阶方法或利用更快的拟牛顿步骤来有效解决此问题。对于具有| E |的图,我们提出的方法每次迭代最多花费O(| E |)。边缘。此外,对于一阶近似方法,所需的迭代次数可以显示为与边数无关。我们在两个应用中展示了实验结果:镶嵌生成和基于颜色相似度的图像布局。

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