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Efficient processing node proximity via random walk with restart

机译:通过随机游走并重新启动来有效处理节点

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摘要

Graph is a useful tool to model complicated data structures. One important task in graph analysis is assessing node proximity based on graph topology. Recently, Random Walk with Restart (RWR) tends to pop up as a promising measure of node proximity, due to its proliferative applications in e.g. recommender systems, and image segmentation. However, the best-known algorithm for computing RWR resorts to a large LU matrix factorization on an entire graph, which is cost-inhibitive. In this paper, we propose hybrid techniques to efficiently compute RWR. First, a novel divide-and-conquer paradigm is designed, aiming to convert the large LU decomposition into small triangular matrix operations recursively on several partitioned subgraphs. Then, on every subgraph, a “sparse accelerator” is devised to further reduce the time of RWR without any sacrifice in accuracy. Our experimental results on real and synthetic datasets show that our approach outperforms the baseline algorithms by at least one constant factor without loss of exactness.
机译:图形是用于建模复杂数据结构的有用工具。图分析中的一项重要任务是基于图拓扑评估节点邻近度。最近,由于其在例如计算机网络中的大量应用,带有重启的随机游走(RWR)趋向于作为有希望的节点接近性的度量弹出。推荐系统和图像分割。但是,用于计算RWR的最著名算法在整个图上都采用较大的LU矩阵分解,这在成本上是不利的。在本文中,我们提出了可有效计算RWR的混合技术。首先,设计了一种新颖的分而治之范式,旨在将大的LU分解在多个分区子图上递归地转换为小的三角矩阵运算。然后,在每个子图上,设计了一个“稀疏加速器”以进一步减少RWR的时间,而不会牺牲任何准确性。我们在真实数据集和合成数据集上的实验结果表明,我们的方法在不损失准确性的情况下,至少比一个常数因子优于基线算法。

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