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A Quantitative Comparison of the Subgraph Miners MoFa, gSpan, FFSM, and Gaston

机译:矿工MoFa,gSpan,FFSM和Gaston子图的定量比较

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摘要

Several new miners for frequent subgraphs have been published recently. Whereas new approaches are presented in detail, the quantitative evaluations are often of limited value: only the performance on a small set of graph databases is discussed and the new algorithm is often only compared to a single competitor based on an executable. It remains unclear, how the algorithms work on bigger/other graph databases and which of their distinctive features is best suited for which database. We have re-implemented the subgraph miners MoFa, gSpan, FFSM, and Gaston within a common code base and with the same level of programming expertise and optimization effort. This paper presents the results of a comparative benchmarking that ran the algorithms on a comprehensive set of graph databases.
机译:最近发布了一些用于频繁子图的新矿机。尽管详细介绍了新方法,但定量评估的价值往往有限:仅讨论少量图形数据库的性能,而新算法通常仅与基于可执行文件的单个竞争对手进行比较。目前尚不清楚,该算法如何在较大/其他图形数据库上工作,以及它们的哪些独特功能最适合哪个数据库。我们以相同的编程专业知识和优化水平在一个通用代码库中重新实现了子图矿工MoFa,gSpan,FFSM和Gaston。本文介绍了比较基准测试的结果,该基准测试在一组完整的图形数据库上运行了该算法。

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