macop.algorithms.multi.MOEAD¶
Multi-Ojective Evolutionary Algorithm with Scalar Decomposition algorithm
Functions
|
Classes
|
Multi-Ojective Evolutionary Algorithm with Scalar Decomposition |
-
class
macop.algorithms.multi.MOEAD.
MOEAD
(_mu, _T, _initalizer, _evaluator, _operators, _policy, _validator, _maximise=True, _parent=None)[source]¶ Multi-Ojective Evolutionary Algorithm with Scalar Decomposition
-
mu
¶ {int} – number of sub problems
-
T
¶ {[float]} – number of neightbors for each sub problem
-
nObjectives
¶ {int} – number of objectives (based of number evaluator)
-
initalizer
¶ {function} – basic function strategy to initialize solution
-
evaluator
¶ {[function]} – list of basic function in order to obtained fitness (multiple objectives)
-
operators
¶ {[Operator]} – list of operator to use when launching algorithm
-
policy
¶ {Policy} – Policy class implementation strategy to select operators
-
validator
¶ {function} – basic function to check if solution is valid or not under some constraints
-
maximise
¶ {bool} – specify kind of optimization problem
-
population
¶ [{Solution}] – population of solution, one for each sub problem
-
pfPop
¶ [{Solution}] – pareto front population
-
weights
¶ [[{float}]] – random weights used for custom mu sub problems
-
callbacks
¶ {[Callback]} – list of Callback class implementation to do some instructions every number of evaluations and load when initializing algorithm
-