Measuring Proximity on Graphs with Side Information

Hanghang Tong, Huiming Qu, H. Jamjoom
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引用次数: 16

Abstract

This paper studies how to incorporate side information (such as users' feedback) in measuring node proximity on large graphs. Our method (ProSIN) is motivated by the well-studied random walk with restart (RWR). The basic idea behind ProSIN is to leverage side information to refine the graph structure so that the random walk is biased towards/away from some specific zones on the graph. Our case studies demonstrate that ProSIN is well-suited in a variety of applications, including neighborhood search, center-piece subgraphs, and image caption. Given the potential computational complexity of ProSIN, we also propose a fast algorithm (Fast-ProSIN) that exploits the smoothness of the graph structures with/without side information. Our experimental evaluation shows that fast-ProSIN achieves significant speedups (up to 49x) over straightforward implementations.
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用边信息测量图的接近度
本文研究了如何在大型图的节点接近度测量中引入侧信息(如用户反馈)。我们的方法(ProSIN)是由经过充分研究的随机行走与重启(RWR)驱动的。ProSIN背后的基本思想是利用侧信息来优化图结构,以便随机游走偏向/远离图上的某些特定区域。我们的案例研究表明,ProSIN非常适合各种应用,包括邻域搜索、中心子图和图像标题。考虑到ProSIN潜在的计算复杂性,我们还提出了一种快速算法(fast -ProSIN),该算法利用了带/不带侧信息的图结构的平滑性。我们的实验评估表明,与直接实现相比,fast-ProSIN实现了显著的加速(高达49倍)。
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