Discovering closed and maximal embedded patterns from large tree data

Data and Knowledge Engineering(2021)

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摘要
Many current applications and systems produce large tree datasets and export, exchange, and represent data in tree-structured form. Extracting informative patterns from large data trees is an important research direction with multiple applications in practice. Pattern mining research initially focused on mining induced patterns and gradually evolved into mining embedded patterns. A well-known problem of frequent pattern mining is the huge number of patterns it produces. This affects not only the efficiency but also the effectiveness of mining. A typical solution to this problem is to summarize frequent patterns through closed and maximal patterns. No previous work addresses the problem of mining closed and/or maximal embedded tree patterns, not even in the framework of mining multiple small trees.
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关键词
Hierarchical graph data,Frequent pattern mining,Embedded tree pattern,Pattern summarization,Maximal and closed frequent pattern
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