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stop_criteria
parameter for multi-objective problems. Enhancing stop_criteria for Multi-Objective Optimization #314stop_criteria
issue in the release version #323stop_criteria
parameter is passed as an iterable (e.g. list) for multi-objective problems (e.g.['reach_50_60', 'reach_20, 40']
). Enhancing stop_criteria for Multi-Objective Optimization #314get_matplotlib()
function from theplot_genes()
method inside thepygad.visualize.plot.Plot
class to import the matplotlib library. plot_genes() missing matplt() #315select_unique_value()
inside thepygad/helper/unique.py
script to select a unique gene from an array of values.get_random_mutation_range()
inside thepygad/utils/mutation.py
script that returns the random mutation range (min and max) for a single gene by its index.change_random_mutation_value_dtype
inside thepygad/utils/mutation.py
script that changes the data type of the value used to apply random mutation.round_random_mutation_value()
inside thepygad/utils/mutation.py
script that rounds the value used to apply random mutation.pygad/helper/misc.py
script with a class calledHelper
that has the following helper methods:change_population_dtype_and_round()
: For each gene in the population, round the gene value and change the data type.change_gene_dtype_and_round()
: Round the change the data type of a single gene.mutation_change_gene_dtype_and_round()
: Decides whether mutation is done by replacement or not. Then it rounds and change the data type of the new gene value.validate_gene_constraint_callable_output()
: Validates the output of the user-defined callable/function that checks whether the gene constraint defined in thegene_constraint
parameter is satisfied or not.get_gene_dtype()
: Returns the gene data type from thegene_type
instance attribute.get_random_mutation_range()
: Returns the random mutation range using therandom_mutation_min_val
andrandom_mutation_min_val
instance attributes.get_initial_population_range()
: Returns the initial population values range using theinit_range_low
andinit_range_high
instance attributes.generate_gene_value_from_space()
: Generates/selects a value for a gene using thegene_space
instance attribute.generate_gene_value_randomly()
: Generates a random value for the gene. Only used ifgene_space
isNone
.generate_gene_value()
: Generates a value for the gene. It checks whethergene_space
isNone
and calls eithergenerate_gene_value_randomly()
orgenerate_gene_value_from_space()
.filter_gene_values_by_constraint()
: Receives a list of values for a gene. Then it filters such values using the gene constraint.get_valid_gene_constraint_values()
: Selects one valid gene value that satisfy the gene constraint. It simply callsgenerate_gene_value()
to generate some gene values then it filters such values usingfilter_gene_values_by_constraint()
.mutation_process_random_value()
inside thepygad/utils/mutation.py
script that generates constrained random values for mutation. It calls eithergenerate_gene_value()
orget_valid_gene_constraint_values()
based on whether thegene_constraint
parameter is used or not.gene_constraint
is added. It accepts a list of callables (i.e. functions) acting as constraints for the gene values. Before selecting a value for a gene, the callable is called to ensure the candidate value is valid. Check the [Gene Constraint](https://pygad.readthedocs.io/en/latest/pygad_more.html#gene-constraint) section for more information. Add inequality constraint of two different genes #119sample_size
is added. To select a gene value that respects a constraint, this variable defines the size of the sample from which a value is selected randomly. Useful if eitherallow_duplicate_genes
orgene_constraint
is used. An instance attribute of the same name is created in the instances of thepygad.GA
class. Check the [sample_size Parameter](https://pygad.readthedocs.io/en/latest/pygad_more.html#sample-size-parameter) section for more information.sample_size
parameter instead ofnum_trials
in the methodssolve_duplicate_genes_randomly()
andunique_float_gene_from_range()
inside thepygad/helper/unique.py
script. It is the maximum number of values to generate as the search space when looking for a unique float value out of a range.allow_duplicate_genes=False
. Previously, gene values were checked for duplicates before rounding, which could allow near-duplicates like 7.61 and 7.62 to pass. After rounding (e.g., both becoming 7.6), this resulted in unintended duplicates. The fix ensures gene values are now rounded before duplicate checks, preventing such cases.sort_solutions_nsga2()
method in thepygad/utils/nsga2.py
script to accept an optional parameter calledfind_best_solution
when calling this method just to find the best solution.get_non_dominated_set()
method inside thepygad/utils/nsga2.py
script. It was swapping the non-dominated and dominated sets. In other words, it used the non-dominated set as if it is the dominated set and vice versa. All the calls to this method were edited accordingly. Incorrect Pareto Front Assignment #320.best_solution()
method when retrieving the best solution for multi-objective problems. fix: best_solution for multi-objective optimization #330 #331