Frequent Generalized Subgraph Mining via Graph Edit Distances.

Richard Palme,Pascal Welke

PKDD/ECML Workshops (2)(2022)

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摘要
In this work, we propose a method for computing generalized frequent subgraph patterns which is based on the graph edit distance. Graph data is often equipped with semantic information in form of an ontology, for example when dealing with linked data or knowledge graphs. Previous work suggests to exploit this semantic information in order to compute frequent generalized patterns, i.e. patterns for which the total frequency of all more specific patterns exceeds the frequency threshold. However, the problem of computing the frequency of a generalized pattern has not yet been fully addressed.
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关键词
frequent generalized subgraph mining,subgraph edit distances
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