DocumentCode
755395
Title
Practical Algorithms and Lower Bounds for Similarity Search in Massive Graphs
Author
Fogaras, Dániel ; Rácz, Balázs
Author_Institution
Google Inc., Mountain View, CA
Volume
19
Issue
5
fYear
2007
fDate
5/1/2007 12:00:00 AM
Firstpage
585
Lastpage
598
Abstract
To exploit the similarity information hidden in the hyperlink structure of the Web, this paper introduces algorithms scalable to graphs with billions of vertices on a distributed architecture. The similarity of multistep neighborhoods of vertices are numerically evaluated by similarity functions including SimRank, a recursive refinement of cocitation, and PSimRank, a novel variant with better theoretical characteristics. Our methods are presented in a general framework of Monte Carlo similarity search algorithms that precompute an index database of random fingerprints, and at query time, similarities are estimated from the fingerprints. We justify our approximation method by asymptotic worst-case lower bounds: we show that there is a significant gap between exact and approximate approaches, and suggest that the exact computation, in general, is infeasible for large-scale inputs. We were the first to evaluate SimRank on real Web data. On the Stanford WebBase graph of 80M pages the quality of the methods increased significantly in each refinement step until step four
Keywords
Internet; Monte Carlo methods; graph theory; query formulation; search engines; Monte Carlo similarity search algorithm; distributed architecture; lower bound; massive graph; practical algorithm; query time; random fingerprint; Approximation methods; Databases; Fingerprint recognition; Helium; Indexes; Large-scale systems; Monte Carlo methods; Search engines; Service oriented architecture; Web search; Web search; graph algorithms; probabilistic algorithms.; similarity measures;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2007.1008
Filename
4138198
Link To Document