Publication | Closed Access
Unordered tree mining with applications to phylogeny
65
Citations
43
References
2004
Year
Unknown Venue
EngineeringPattern DiscoveryPattern MiningNew Fsm TechniquePhylogeneticsData ScienceData MiningPhylogeny ComparisonTree LanguageKnowledge DiscoveryComputer ScienceKernel TreesBioinformaticsBiologyFrequent Pattern MiningGraph TheoryNatural SciencesEvolutionary BiologyFrequent Structure MiningTree MiningStructure DiscoveryPhylogenetic MethodStructure MiningSymbiosis
Frequent structure mining (FSM) aims to discover and extract patterns frequently occurring in structural data, such as trees and graphs. FSM finds many applications in bioinformatics, XML processing, Web log analysis, and so on. We present a new FSM technique for finding patterns in rooted unordered labeled trees. The patterns of interest are cousin pairs in these trees. A cousin pair is a pair of nodes sharing the same parent, the same grandparent, or the same great-grandparent, etc. Given a tree T, our algorithm finds all interesting cousin pairs of T in O(|T|/sup 2/) time where |T| is the number of nodes in T. Experimental results on synthetic data and phylogenies show the scalability and effectiveness of the proposed technique. To demonstrate the usefulness of our approach, we discuss its applications to locating co-occurring patterns in multiple evolutionary trees, evaluating the consensus of equally parsimonious trees, and finding kernel trees of groups of phylogenies. We also describe extensions of our algorithms for undirected acyclic graphs (or free trees).
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