NSGA2IntegerGeneticAlgorithm#
- class pybrops.opt.algo.NSGA2IntegerGeneticAlgorithm.NSGA2IntegerGeneticAlgorithm(ngen=250, pop_size=100, rng=RandomState(MT19937) at 0x7F8D0DF4C840, **kwargs)[source]#
Bases:
IntegerOptimizationAlgorithm
Class implementing an NSGA-II genetic algorithm adapted for subset selection optimization. The search space is discrete and nominal in nature.
Constructor for NSGA-II subset optimization algorithm.
- Parameters:
ngen (int) – Number of generations to evolve population.
mu (int) – Number of parental candidates to keep in population.
lamb (int) – Number of progeny to generate.
M (float) – Length of the chromosome genetic map, in Morgans.
rng (numpy.random.Generator, numpy.random.RandomState, None) – Random number generator source.
kwargs (dict) – Additional keyword arguments.
Methods
Optimize an objective function.
Attributes
Number of generations.
Number of individuals in the main chromosome population.
Random number generator source.
- minimize(prob, miscout=None, **kwargs)[source]#
Optimize an objective function.
- Parameters:
prob (IntegerProblem) – A problem definition object on which to optimize.
miscout (dict) – Miscellaneous output from the constrained optimizaiont algorithm.
kwargs (dict) – Additional keyword arguments
- Returns:
out – An object containing the solution to the provided problem.
- Return type:
- property ngen: Integral#
Number of generations.
- property pop_size: Integral#
Number of individuals in the main chromosome population.
- property rng: Generator | RandomState#
Random number generator source.