Performing a 10-fold cross validation: Difference between revisions

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1,
1,
//stopping criterion
//stopping criterion
1E-6,
new SmallDifferenceOfFunctionEvaluationsCondition(1E-6),
//parameterization of the model, LAMBDA complies with the
//parameterization of the model, LAMBDA complies with the
//parameterization by log-probabilities
//parameterization by log-probabilities

Latest revision as of 07:51, 6 June 2011

//create a Sample for each class from the input data, using the DNA alphabet
Sample[] data = new Sample[2];
data[0] = new DNASample( args[0] );

//the length of our input sequences
int length = data[0].getElementLength();

data[1] = new Sample( new DNASample( args[1] ), length );
 
AlphabetContainer container = data[0].getAlphabetContainer();

//create a new PWM
BayesianNetworkModel pwm = new BayesianNetworkModel( new BayesianNetworkModelParameterSet(
		//the alphabet and the length of the model:
		container, length, 
		//the equivalent sample size to compute hyper-parameters
		4, 
		//some identifier for the model
		"my PWM", 
		//we want a PWM, which is an inhomogeneous Markov model (IMM) of order 0
		ModelType.IMM, (byte) 0, 
		//we want to estimate the MAP-parameters
		LearningType.ML_OR_MAP ) );
 
//create a new mixture model using 2 PWMs
MixtureModel mixPwms = new MixtureModel(
		//the length of the mixture model
		length, 
		//the two components, which are PWMs
		new Model[]{pwm,pwm},
		//the number of starts of the EM
		10,
		//the equivalent sample sizes
		new double[]{pwm.getESS(),pwm.getESS()},
		//the hyper-parameters to draw the initial sequence-specific component weights (hidden variables)
		1,
		//stopping criterion
		new SmallDifferenceOfFunctionEvaluationsCondition(1E-6),
		//parameterization of the model, LAMBDA complies with the
		//parameterization by log-probabilities
		Parameterization.LAMBDA);
 
//create a new inhomogeneous Markov model of order 3
BayesianNetworkModel mm = new BayesianNetworkModel( 
		new BayesianNetworkModelParameterSet( container, length, 256, "my iMM(3)", ModelType.IMM, (byte) 3, LearningType.ML_OR_MAP ) );
 
//create a new PWM scoring function
BayesianNetworkScoringFunction dPwm = new BayesianNetworkScoringFunction(
		//the alphabet and the length of the scoring function
		container, length, 
		//the equivalent sample size for the plug-in parameters
		4, 
		//we use plug-in parameters
		true, 
		//a PWM is an inhomogeneous Markov model of order 0
		new InhomogeneousMarkov(0));
 
//create a new mixture scoring function
MixtureScoringFunction dMixPwms = new MixtureScoringFunction(
		//the number of starts
		2,
		//we use plug-in parameters
		true,
		//the two components, which are PWMs
		dPwm,dPwm);
 
//create a new scoring function that is an inhomogeneous Markov model of order 3
BayesianNetworkScoringFunction dMm = new BayesianNetworkScoringFunction(container, length, 4, true, new InhomogeneousMarkov(3));
 
//create the classifiers
int threads = AbstractMultiThreadedOptimizableFunction.getNumberOfAvailableProcessors();
AbstractScoreBasedClassifier[] classifiers = new AbstractScoreBasedClassifier[]{
							   //model based with mixture model and Markov model
							   new ModelBasedClassifier( mixPwms, mm ),
							   //conditional likelihood based classifier
							   new MSPClassifier( new GenDisMixClassifierParameterSet(container, length, 
									   //method for optimizing the conditional likelihood and 
									   //other parameters of the numerical optimization
									   Optimizer.QUASI_NEWTON_BFGS, 1E-2, 1E-2, 1, true, KindOfParameter.PLUGIN, false, threads),
									   //mixture scoring function and Markov model scoring function
									   dMixPwms,dMm )
};
 
//create an new k-fold cross validation using above classifiers
KFoldCrossValidation cv = new KFoldCrossValidation( classifiers );
 
//we use a specificity of 0.999 to compute the sensitivity and a sensitivity of 0.95 to compute FPR and PPV
MeasureParameters mp = new MeasureParameters(false, 0.999, 0.95, 0.95);
//we do a 10-fold cross validation and partition the data by means of the number of symbols
KFoldCVAssessParameterSet cvpars = new KFoldCVAssessParameterSet(PartitionMethod.PARTITION_BY_NUMBER_OF_SYMBOLS, length, true, 10);
 
//compute the result of the cross validation and print them to System.out
System.out.println( cv.assess( mp, cvpars, data ) );