
Improved Heuristics for Minimum-Flip Supertree Construction
Author(s) -
Duhong Chen,
Oliver Eulenstein,
David Fernández-Baca,
J. Gordon Burleigh
Publication year - 2006
Publication title -
evolutionary bioinformatics online
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.502
H-Index - 32
ISSN - 1176-9343
DOI - 10.1177/117693430600200003
Subject(s) - supertree , heuristics , heuristic , computer science , representation (politics) , artificial intelligence , matrix representation , tree (set theory) , matrix (chemical analysis) , algorithm , pattern recognition (psychology) , machine learning , mathematical optimization , mathematics , combinatorics , biology , phylogenetics , biochemistry , chemistry , organic chemistry , politics , gene , political science , law , group (periodic table) , materials science , composite material
The utility of the matrix representation with flipping (MRF) supertree method has been limited by the speed of its heuristic algorithms. We describe a new heuristic algorithm for MRF supertree construction that improves upon the speed of the previous heuristic by a factor of n (the number of taxa in the supertree). This new heuristic makes MRF tractable for large-scale supertree analyses and allows the first comparisons of MRF with other supertree methods using large empirical data sets. Analyses of three published supertree data sets with between 267 to 571 taxa indicate that MRF supertrees are equally or more similar to the input trees on average than matrix representation with parsimony (MRP) and modified mincut supertrees. The results also show that large differences may exist between MRF and MRP supertrees and demonstrate that the MRF supertree method is a practical and potentially more accurate alternative to the nearly ubiquitous MRP super-tree method.