/**
* Copyright (C) 2001-2017 by RapidMiner and the contributors
*
* Complete list of developers available at our web site:
*
* http://rapidminer.com
*
* This program is free software: you can redistribute it and/or modify it under the terms of the
* GNU Affero General Public License as published by the Free Software Foundation, either version 3
* of the License, or (at your option) any later version.
*
* This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without
* even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU
* Affero General Public License for more details.
*
* You should have received a copy of the GNU Affero General Public License along with this program.
* If not, see http://www.gnu.org/licenses/.
*/
package com.rapidminer.operator.validation;
import com.rapidminer.example.ExampleSet;
import com.rapidminer.example.set.SplittedExampleSet;
import com.rapidminer.operator.OperatorCapability;
import com.rapidminer.operator.OperatorDescription;
import com.rapidminer.operator.OperatorException;
import com.rapidminer.operator.OperatorVersion;
import com.rapidminer.operator.UserError;
import com.rapidminer.operator.ports.metadata.AttributeMetaData;
import com.rapidminer.operator.ports.metadata.CapabilityPrecondition;
import com.rapidminer.operator.ports.metadata.MDInteger;
import com.rapidminer.operator.ports.metadata.Precondition;
import com.rapidminer.operator.ports.quickfix.ParameterSettingQuickFix;
import com.rapidminer.operator.ports.quickfix.QuickFix;
import com.rapidminer.operator.visualization.ProcessLogOperator;
import com.rapidminer.parameter.ParameterType;
import com.rapidminer.parameter.ParameterTypeCategory;
import com.rapidminer.parameter.ParameterTypeInt;
import com.rapidminer.parameter.UndefinedParameterError;
import com.rapidminer.tools.RandomGenerator;
import java.util.List;
/**
* <p>
* A FixedSplitValidationChain splits up the example set at a fixed point into a training and test
* set and evaluates the model (linear sampling). For non-linear sampling methods, i.e. the data is
* shuffled, the specified amounts of data are used as training and test set. The sum of both must
* be smaller than the input example set size.
* </p>
*
* <p>
* At least either the training set size must be specified (rest is used for testing) or the test
* set size must be specified (rest is used for training). If both are specified, the rest is not
* used at all.
* </p>
*
* <p>
* The first inner operator must accept an {@link com.rapidminer.example.ExampleSet} while the
* second must accept an {@link com.rapidminer.example.ExampleSet} and the output of the first
* (which in most cases is a {@link com.rapidminer.operator.Model}) and must produce a
* {@link com.rapidminer.operator.performance.PerformanceVector}.
* </p>
*
* <p>
* This validation operator provides several values which can be logged by means of a
* {@link ProcessLogOperator}. All performance estimation operators of RapidMiner provide access to
* the average values calculated during the estimation. Since the operator cannot ensure the names
* of the delivered criteria, the ProcessLog operator can access the values via the generic value
* names:
* </p>
* <ul>
* <li>performance: the value for the main criterion calculated by this validation operator</li>
* <li>performance1: the value of the first criterion of the performance vector calculated</li>
* <li>performance2: the value of the second criterion of the performance vector calculated</li>
* <li>performance3: the value of the third criterion of the performance vector calculated</li>
* <li>for the main criterion, also the variance and the standard deviation can be accessed where
* applicable.</li>
* </ul>
*
* @author Simon Fischer, Ingo Mierswa
*/
public class FixedSplitValidationChain extends ValidationChain {
public static final String PARAMETER_TRAINING_SET_SIZE = "training_set_size";
public static final String PARAMETER_TEST_SET_SIZE = "test_set_size";
public static final String PARAMETER_SAMPLING_TYPE = "sampling_type";
public FixedSplitValidationChain(OperatorDescription description) {
super(description);
}
@Override
protected Precondition getCapabilityPrecondition() {
return new CapabilityPrecondition(this, trainingSetInput) {
@Override
protected List<QuickFix> getFixesForRegressionWhenClassificationSupported(AttributeMetaData labelMD) {
List<QuickFix> fixes = super.getFixesForRegressionWhenClassificationSupported(labelMD);
fixes.add(0, new ParameterSettingQuickFix(FixedSplitValidationChain.this, PARAMETER_SAMPLING_TYPE,
SplittedExampleSet.SHUFFLED_SAMPLING + "", "switch_to_shuffled_sampling"));
return fixes;
}
};
}
@Override
public void estimatePerformance(ExampleSet inputSet) throws OperatorException {
int trainingSetSize = getParameterAsInt(PARAMETER_TRAINING_SET_SIZE);
int testSetSize = getParameterAsInt(PARAMETER_TEST_SET_SIZE);
int inputSetSize = inputSet.size();
if (inputSetSize < trainingSetSize + testSetSize) {
throw new UserError(this, 110, (trainingSetSize + testSetSize) + " (" + trainingSetSize + " for training, "
+ testSetSize + " for testing)");
}
int rest = inputSetSize - (trainingSetSize + testSetSize);
if ((trainingSetSize < 1) && (testSetSize < 1)) {
throw new UserError(this, 116, "training_set_size / test_set_size",
"either training_set_size or test_set_size or both must be greater than 1.");
} else if (testSetSize < 1) {
rest = 0;
testSetSize = inputSetSize - trainingSetSize;
} else if (trainingSetSize < 1) {
rest = 0;
trainingSetSize = inputSetSize - testSetSize;
}
log("Using " + trainingSetSize + " examples for learning and " + testSetSize + " examples for testing. " + rest
+ " examples are not used.");
double[] ratios = new double[] { (double) trainingSetSize / (double) inputSetSize,
(double) testSetSize / (double) inputSetSize, (double) rest / (double) inputSetSize };
SplittedExampleSet eSet = new SplittedExampleSet(inputSet, ratios, getParameterAsInt(PARAMETER_SAMPLING_TYPE),
getParameterAsBoolean(RandomGenerator.PARAMETER_USE_LOCAL_RANDOM_SEED),
getParameterAsInt(RandomGenerator.PARAMETER_LOCAL_RANDOM_SEED), getCompatibilityLevel().isAtMost(
SplittedExampleSet.VERSION_SAMPLING_CHANGED));
eSet.selectSingleSubset(0);
learn(eSet);
eSet.selectSingleSubset(1);
evaluate(eSet);
}
@Override
protected MDInteger getTestSetSize(MDInteger originalSize) throws UndefinedParameterError {
return new MDInteger(getParameterAsInt(PARAMETER_TEST_SET_SIZE));
}
@Override
protected MDInteger getTrainingSetSize(MDInteger originalSize) throws UndefinedParameterError {
return new MDInteger(getParameterAsInt(PARAMETER_TRAINING_SET_SIZE));
}
@Override
public List<ParameterType> getParameterTypes() {
List<ParameterType> types = super.getParameterTypes();
ParameterType type = new ParameterTypeInt(PARAMETER_TRAINING_SET_SIZE,
"Absolute size required for the training set (-1: use rest for training)", -1, Integer.MAX_VALUE, 100);
type.setExpert(false);
types.add(type);
type = new ParameterTypeInt(PARAMETER_TEST_SET_SIZE,
"Absolute size required for the test set (-1: use rest for testing)", -1, Integer.MAX_VALUE, -1);
type.setExpert(false);
types.add(type);
types.add(new ParameterTypeCategory(
PARAMETER_SAMPLING_TYPE,
"Defines the sampling type of the cross validation (linear = consecutive subsets, shuffled = random subsets, stratified = random subsets with class distribution kept constant)",
SplittedExampleSet.SAMPLING_NAMES, SplittedExampleSet.SHUFFLED_SAMPLING, false));
types.addAll(RandomGenerator.getRandomGeneratorParameters(this));
return types;
}
@Override
public OperatorVersion[] getIncompatibleVersionChanges() {
return new OperatorVersion[] { SplittedExampleSet.VERSION_SAMPLING_CHANGED };
}
@Override
public boolean supportsCapability(OperatorCapability capability) {
switch (capability) {
case NO_LABEL:
return false;
case NUMERICAL_LABEL:
try {
return getParameterAsInt(PARAMETER_SAMPLING_TYPE) != SplittedExampleSet.STRATIFIED_SAMPLING;
} catch (UndefinedParameterError e) {
return false;
}
default:
return true;
}
}
}