gSpan: graph-based substructure pattern mining

Xifeng Yan, Jiawei Han
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引用次数: 2414

Abstract

We investigate new approaches for frequent graph-based pattern mining in graph datasets and propose a novel algorithm called gSpan (graph-based substructure pattern mining), which discovers frequent substructures without candidate generation. gSpan builds a new lexicographic order among graphs, and maps each graph to a unique minimum DFS code as its canonical label. Based on this lexicographic order gSpan adopts the depth-first search strategy to mine frequent connected subgraphs efficiently. Our performance study shows that gSpan substantially outperforms previous algorithms, sometimes by an order of magnitude.
gSpan:基于图的子结构模式挖掘
我们研究了在图数据集中频繁的基于图的模式挖掘的新方法,并提出了一种名为gSpan(基于图的子结构模式挖掘)的新算法,该算法发现频繁的子结构而不需要生成候选子结构。gSpan在图之间构建新的字典顺序,并将每个图映射到唯一的最小DFS代码作为其规范标签。基于这种字典顺序,gSpan采用深度优先搜索策略高效地挖掘频繁连通子图。我们的性能研究表明,gSpan大大优于以前的算法,有时甚至超过一个数量级。
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