DocumentCode
1823262
Title
ASCOS: An Asymmetric network Structure COntext Similarity measure
Author
Hung-Hsuan Chen ; Giles, C. Lee
Author_Institution
Comput. Sci. & Eng., Pennsylvania State Univ., University Park, PA, USA
fYear
2013
fDate
25-28 Aug. 2013
Firstpage
442
Lastpage
449
Abstract
Discovering similar objects in a social network has many interesting issues. Here, we present ASCOS, an Asymmetric Structure COntext Similarity measure that captures the similarity scores among any pairs of nodes in a network. The definition of ASCOS is similar to that of the well-known SimRank since both define score values recursively. However, we show that ASCOS outputs a more complete similarity score than SimRank because SimRank (and several of its variations, such as P-Rank and SimFusion) on average ignores half paths between nodes during calculation. To make ASCOS tractable in both computation time and memory usage, we propose two variations of ASCOS: a low rank approximation based approach and an iterative solver Gauss-Seidel for linear equations.When the target network is sparse, the run time and the required computing space of these variations are smaller than computing SimRank and ASCOS directly. In addition, the iterative solver divides the original network into several independent sub-systems so that a multi-core server or a distributed computing environment, such as MapReduce, can efficiently solve the problem. We compare the performance of ASCOS with other global structure based similarity measures, including SimRank, Katz, and LHN. The experimental results based on user evaluation suggest that ASCOS gives better results than other measures. In addition, the asymmetric property has the potential to identify the hierarchical structure of a network. Finally, variations of ASCOS (including one distributed variation) can also reduce computation both in space and time.
Keywords
Gaussian processes; distributed processing; iterative methods; social networking (online); ASCOS; Gauss-Seidel; MapReduce; SimRank; asymmetric network structure conntext similarity; distributed computing; iterative solver; linear equations; multicore server; social network; Approximation methods; Equations; Mathematical model; Silicon; Social network services; Sparse matrices; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Advances in Social Networks Analysis and Mining (ASONAM), 2013 IEEE/ACM International Conference on
Conference_Location
Niagara Falls, ON
Type
conf
Filename
6785743
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