MOGAMUN
MOGAMUN is a multi-objective genetic algorithm that identifies active modules in a multiplex biological network. This allows analyzing different biological networks at the same time. MOGAMUN is based on NSGA-II (Non-Dominated Sorting Genetic Algorithm, version II), which we adapted to work on networks.
- Repository
- github.com/elvanov/mogamun
Source attribution
- Bioconductor — MOGAMUN
Related resources
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