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Variational Dual-Tree Framework for Large-Scale Transition Matrix Approximation

机译:大规模过渡矩阵逼近的变分双树框架

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In recent years, non-parametric methods utilizing random walks on graphs have been used to solve a wide range of machine learning problems, but in their simplest form they do not scale well due to the quadratic complexity. In this paper, a new dual-tree based variational approach for approximating the transition matrix and efficiently performing the random walk is proposed. The approach exploits a connection between kernel density estimation, mixture modeling, and random walk on graphs in an optimization of the transition matrix for the data graph that ties together edge transitions probabilities that are similar. Compared to the de facto standard approximation method based on k-nearest-neighbors, we demonstrate order of magnitudes speedup without sacrificing accuracy for Label Propagation tasks on benchmark data sets in semi-supervised learning.
机译:近年来,已经使用图上的随机游走的非参数方法来解决各种各样的机器学习问题,但是由于二次复杂性,它们以最简单的形式无法很好地扩展。本文提出了一种新的基于双树的变分方法,用于近似过渡矩阵并有效地执行随机游走。该方法利用了内核密度估计,混合建模和图上随机游走之间的联系,从而优化了将相似的边沿转移概率联系在一起的数据图的转移矩阵。与基于k最近邻的事实上的标准近似方法相比,我们证明了在半监督学习中基准数据集上的标签传播任务不牺牲准确性的情况下,可以实现数量级加速。

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