We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Mining rooted ordered trees under subtree homeomorphism.
- Authors
Haghir Chehreghani, Mostafa; Bruynooghe, Maurice
- Abstract
Mining frequent tree patterns has many applications in different areas such as XML data, bioinformatics and World Wide Web. The crucial step in frequent pattern mining is frequency counting, which involves a matching operator to find occurrences (instances) of a tree pattern in a given collection of trees. A widely used matching operator for tree-structured data is subtree homeomorphism, where an edge in the tree pattern is mapped onto an ancestor-descendant relationship in the given tree. Tree patterns that are frequent under subtree homeomorphism are usually called embedded patterns. In this paper, we present an efficient algorithm for subtree homeomorphism with application to frequent pattern mining. We propose a compact data-structure, called occ, which stores only information about the rightmost paths of occurrences and hence can encode and represent several occurrences of a tree pattern. We then define efficient join operations on the occ data-structure, which help us count occurrences of tree patterns according to occurrences of their proper subtrees. Based on the proposed subtree homeomorphism method, we develop an effective pattern mining algorithm, called TPMiner. We evaluate the efficiency of TPMiner on several real-world and synthetic datasets. Our extensive experiments confirm that TPMiner always outperforms well-known existing algorithms, and in several cases the improvement with respect to existing algorithms is significant.
- Subjects
HOMEOMORPHISMS; EMBEDDED computer systems; DATA mining; XML (Extensible Markup Language); DATA structures
- Publication
Data Mining & Knowledge Discovery, 2016, Vol 30, Issue 5, p1249
- ISSN
1384-5810
- Publication type
Article
- DOI
10.1007/s10618-015-0439-5