Class Swarm
java.lang.Object
unifeat.featureSelection.wrapper.PSOBasedMethods.BasicSwarm<Boolean,Particle>
unifeat.featureSelection.wrapper.PSOBasedMethods.HPSO_LS.Swarm
This java class is used to implement a swarm of particles in hybrid particle
swarm optimization method using local search (HPSO-LS) in which the type of
position vector is boolean and the type of particle is extended from Particle
class.
- Author:
- Sina Tabakhi
- See Also:
-
Field Summary
Fields inherited from class unifeat.featureSelection.wrapper.PSOBasedMethods.BasicSwarm
C1, C2, END_POS_INTERVAL, fitnessEvaluator, gBest, INERTIA_WEIGHT, MAX_VELOCITY, MIN_VELOCITY, population, POPULATION_SIZE, PROBLEM_DIMENSION, START_POS_INTERVAL
-
Constructor Summary
-
Method Summary
Modifier and TypeMethodDescriptionvoid
This method evaluates the fitness of each particle in the swarm by predefined fitness function.void
This method initializes the position and velocity vectors of each particle in the swarm.void
This method performs a local search strategy on each particle which is based on correlation of features.void
setDataInfo
(double[][] data) This method sets the information of the dataset.void
This method updates the global best position (global best) of the swarm.void
This method updates the position vector of each particle in the swarm.void
This method updates the velocity vector of each particle in the swarm.void
This method updates the best position (personal best) of each particle in the swarm.Methods inherited from class unifeat.featureSelection.wrapper.PSOBasedMethods.BasicSwarm
getGBest, getGBestFitness, setGBest, setGBestFitness
-
Field Details
-
EPSILON
public static double EPSILON -
ALPHA
public static double ALPHA
-
-
Constructor Details
-
Swarm
public Swarm(double epsilon, double alpha) Initializes the parameters- Parameters:
epsilon
- the epsilon parameter used in the subset size determining schemealpha
- the alpha parameter used in the local search operation (control similar/dissimilar)
-
-
Method Details
-
initialization
public void initialization()This method initializes the position and velocity vectors of each particle in the swarm. Each particle is randomly initialized in the predefined ranges of values. The number of selected features in each particle is constant and defined by a scheme.- Specified by:
initialization
in classBasicSwarm<Boolean,
Particle>
-
evaluateFitness
public void evaluateFitness()This method evaluates the fitness of each particle in the swarm by predefined fitness function. K-fold cross validation on training set is used for evaluating the classification performance of selected feature subset by each particle.- Specified by:
evaluateFitness
in classBasicSwarm<Boolean,
Particle>
-
updatePersonalBest
public void updatePersonalBest()This method updates the best position (personal best) of each particle in the swarm. Personal best position is updated when the classification performance of the particle's new position is better than personal best.- Specified by:
updatePersonalBest
in classBasicSwarm<Boolean,
Particle>
-
updateGlobalBest
public void updateGlobalBest()This method updates the global best position (global best) of the swarm. Global best position is updated when the classification performance of any personal best position of the particles is better than global best.- Specified by:
updateGlobalBest
in classBasicSwarm<Boolean,
Particle>
-
updateParticleVelocity
public void updateParticleVelocity()This method updates the velocity vector of each particle in the swarm.- Specified by:
updateParticleVelocity
in classBasicSwarm<Boolean,
Particle>
-
updateParticlePosition
public void updateParticlePosition()This method updates the position vector of each particle in the swarm.- Specified by:
updateParticlePosition
in classBasicSwarm<Boolean,
Particle>
-
operateLocalSearch
public void operateLocalSearch()This method performs a local search strategy on each particle which is based on correlation of features. -
setDataInfo
public void setDataInfo(double[][] data) This method sets the information of the dataset.- Parameters:
data
- the input dataset values
-