package jcgp.backend.modules.problem;
import java.io.File;
import jcgp.backend.function.FunctionSet;
import jcgp.backend.modules.Module;
import jcgp.backend.parameters.DoubleParameter;
import jcgp.backend.parameters.monitors.DoubleMonitor;
import jcgp.backend.population.Population;
import jcgp.backend.resources.ModifiableResources;
import jcgp.backend.resources.Resources;
/**
* Defines the general behaviour of a CGP problem. The primary function of {@code Problem}
* is to evaluate a population and assign a fitness value to each chromosome.
*
* Problems are free to define whether better fitness means a higher or lower fitness value.
* In some problem types, it is more convenient to treat fitness 0 as the best possible value.
* This can be done by changing the fitness orientation to {@code BestFitness.HIGH} or {@code BestFitness.LOW} as appropriate.
* Fitness orientation is set to high by default.
*
* When extending this class, the constructor should call a few methods in order to
* properly construct the problem type: {@code setFunctionSet()}, {@code setFileExtension()} and {@code setFitnessOrientation()},
* with the respective arguments. As with all subclasses of {@code Module}, {@code setName()} and
* {@code registerParameters()} should be used where appropriate as well.
*
* It is advisable to use {@code Resources.reportln()} and {@code Resources.report()}
* to print any relevant information. Note that reportln() and report() are affected
* by the report interval base parameter. Use {@code Resources.println()} and
* {@code Resources.print()} to print information regardless of the current generation.
* See {@link Resources} for more information.
*
* @see Module
* @author Eduardo Pedroni
*
*/
public abstract class Problem extends Module {
private FunctionSet functionSet;
private String fileExtension = ".*";
private BestFitness fitnessOrientation = BestFitness.HIGH;
protected DoubleParameter maxFitness, bestFitness;
/**
* Initialises the two problem-wide parameters, maxFitness and bestFitness.
*
* @param resources a reference to the experiment's resources.
*/
protected Problem(Resources resources) {
super(resources);
maxFitness = new DoubleMonitor(0, "Max fitness");
bestFitness = new DoubleMonitor(0, "Best fitness");
registerParameters(maxFitness, bestFitness);
}
/**
* The most important method of the problem type. This is called once
* per generation, when the new population has been generated.
*
* The basic functionality of this method is to loop through all chromosomes
* in the population and decode them according to the problem type. The
* fitness of each chromosome is then calculated using the problem data
* or otherwise (subjective problem types such as art generation might
* leave fitness evaluations up to the user) and assigned to the appropriate
* chromosome.
*
* In addition, realisations of this method should update the value of
* bestFitness as appropriate, since the value of this parameter is displayed
* if a GUI is in use.
*
* @param population the population to be evaluated.
*/
public abstract void evaluate(Population population);
/**
* Used to assert whether a given population contains a perfect solution
* to the problem. It is up to the problem to define what qualifies
* a perfect solution, as some problems (subject ones such as music and
* art evolution, for example) might not have perfect solutions at all.
*
* @param population the population to search through for a perfect chromosome.
* @return the perfect solution index, if one exits, -1 if no perfect solution was found.
*/
public abstract int hasPerfectSolution(Population population);
/**
* Used to assert whether a given population has a chromosome that is an improvement over
* the current best chromosome. A typical implementation of this method
* will simply compare chromosome fitness values, though the problem type
* is free to implement this in any way.
*
* @param population the population potentially containing a fitter chromosome.
* @return the index of the first chromosome in the population that is an improvement, -1 if none is found.
*/
public abstract int hasImprovement(Population population);
/**
* Parses the specified file and uses the parsed data to
* set up the problem type instance appropriately. Any necessary
* resource changes can be performed using the provided {@code ModifiableResources}
* instance.
*
* In addition, realisations of this method should update the value of
* maxFitness where appropriate, as this may be displayed to the user
* if a GUI is in use.
*
* @param file the data file to parse.
* @param resources a modifiable reference to the experiment's resources.
*/
public abstract void parseProblemData(File file, ModifiableResources resources);
/**
* For internal use in subclass constructor, sets the functions to be
* used for this problem type. See {@link FunctionSet} for more details.
*
* @param newFunctionSet the function set to use.
*/
protected void setFunctionSet(FunctionSet newFunctionSet) {
this.functionSet = newFunctionSet;
}
/**
* @return the FunctionSet object used by this problem type.
*/
public FunctionSet getFunctionSet() {
return functionSet;
}
/**
* For internal use in subclass constructors, sets the file extension accepted
* by this problem type's parser. This is used by the GUI to filter loaded files
* by extension in a file chooser. File extensions should be set in the form ".*",
* so for plain text files, ".txt" would be used.
*
* @param fileExtension the accepted file extension.
*/
protected void setFileExtension(String fileExtension) {
this.fileExtension = fileExtension;
}
/**
* @return the file extension accepted by this problem type for problem data files.
*/
public String getFileExtension() {
return fileExtension;
}
/**
* @param newOrientation the new fitness orientation to set.
*/
protected void setFitnessOrientation(BestFitness newOrientation) {
this.fitnessOrientation = newOrientation;
}
/**
* @return the fitness orientation of this particular problem.
*/
public BestFitness getFitnessOrientation() {
return fitnessOrientation;
}
/**
* @return the current best fitness, in other words, the fitness
* value of the fittest chromosome in the current generation.
*/
public double getBestFitness() {
return bestFitness.get();
}
/**
* Resets the bestFitness parameter.
*/
public void reset() {
bestFitness.set(0);
}
}