Scheduled approximation for Personalized PageRank with Utility-based Hub Selection

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Scheduled approximation for Personalized PageRank with Utility-based Hub Selection
Title:
Scheduled approximation for Personalized PageRank with Utility-based Hub Selection
Journal Title:
The VLDB Journal
OA Status:
Publication Date:
29 January 2015
Citation:
Zhu, F., Fang, Y., Chang, K.C. et al. The VLDB Journal (2015) 24: 655. doi:10.1007/s00778-014-0376-8
Abstract:
As Personalized PageRank has been widely leveraged for ranking on a graph, the efficient computation of Personalized PageRank Vector (PPV) becomes a prominent issue. In this paper, we propose FastPPV, an approximate PPV computation algorithm that is incremental and accuracy-aware. Our approach hinges on a novel paradigm of scheduled approximation: the computation is partitioned and scheduled for processing in an “organized” way, such that we can gradually improve our PPV estimation in an incremental manner and quantify the accuracy of our approximation at query time. Guided by this principle, we develop an efficient hub-based realization, where we adopt the metric of hub length to partition and schedule random walk tours so that the approximation error reduces exponentially over iterations. In addition, as tours are segmented by hubs, the shared substructures between different tours (around the same hub) can be reused to speed up query processing both within and across iterations. Given the key roles played by the hubs, we further investigate the problem of hub selection. In particular, we develop a conceptual model to select hubs based on the two desirable properties of hubs—sharing and discriminating, and present several different strategies to realize the conceptual model. Finally, we evaluate FastPPV over two real-world graphs, and show that it not only significantly outperforms two state-of-the-art baselines in both online and offline phrases, but also scales well on larger graphs. In particular, we are able to achieve near-constant time online query processing irrespective of graph size.
License type:
PublisherCopyrights
Funding Info:
This material is based upon work partially supported by NSF Grant IIS 1018723, the research grant for the Human-centered Cyber-physical Systems Programme at the Advanced Digital Sciences Center of the University of Illinois at Urbana-Champaign, the Agency for Science, Technology and Research of Singapore, and Zhejiang Provincial Natural Science Foundation of China (Grant No. LQ14F020002). Any opinions, findings, and conclusions or recommendations expressed in this publication are those of the author(s) and do not necessarily reflect the views of the funding agencies.
Description:
ISSN:
1066-8888
0949-877X
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