Scalable Processing of Massive Uncertain Graph Data: A Simultaneous Processing Approach

2017 IEEE 33rd International Conference on Data Engineering (ICDE)(2017)

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摘要
This paper studies a novel approach to processing massive uncertain graph data. In this approach, we propose a new framework to simultaneously process a query on a set of randomly sampled possible worlds of an uncertain graph. Based on this framework, we develop a series of algorithms to analyze massive uncertain graphs, including breadth-first search, shortest distance queries, triangle counting, and core decomposition. We implement this approach based on GraphLab, one of the stateof-the-art graph processing frameworks. By sharing fine-grained internal processing steps on common substructures of sampled possible worlds, the new approach achieves tens to hundreds of times speedup in execution time on a cluster of 20 servers.
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关键词
scalable processing,massive uncertain graph data,query processing,breadth-first search,shortest distance queries,triangle counting,core decomposition,GraphLab,graph processing
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