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java.lang.Objectcom.rapidminer.operator.AbstractIOObject
com.rapidminer.operator.ResultObjectAdapter
com.rapidminer.tools.math.Averagable
com.rapidminer.operator.performance.PerformanceCriterion
com.rapidminer.operator.performance.MeasuredPerformance
com.rapidminer.operator.performance.NormalizedAbsoluteError
public class NormalizedAbsoluteError
Normalized absolute error is the total absolute error normalized by the error simply predicting the average of the actual values.
| Constructor Summary | |
|---|---|
NormalizedAbsoluteError()
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NormalizedAbsoluteError(NormalizedAbsoluteError nae)
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| Method Summary | |
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void |
buildSingleAverage(Averagable performance)
This method should build the average of this and another averagable of the same type. |
void |
countExample(Example example)
Calculates the error for the current example. |
java.lang.String |
getDescription()
Returns a description of the performance criterion. |
double |
getExampleCount()
Returns the number of data points which was used to determine the criterion value. |
double |
getFitness()
Returns the fitness depending on the value. |
double |
getMikroAverage()
Returns the (current) value of the averagable (the average itself). |
double |
getMikroVariance()
Returns the variance of the averagable. |
java.lang.String |
getName()
Returns the name of this averagable. |
void |
startCounting(ExampleSet exampleSet,
boolean useExampleWeights)
Initializes the criterion. |
| Methods inherited from class com.rapidminer.operator.performance.MeasuredPerformance |
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startCounting |
| Methods inherited from class com.rapidminer.operator.performance.PerformanceCriterion |
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compareTo, getMaxFitness |
| Methods inherited from class com.rapidminer.tools.math.Averagable |
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buildAverage, clone, cloneAveragable, formatPercent, getAverage, getAverageCount, getExtension, getFileDescription, getMakroAverage, getMakroStandardDeviation, getMakroVariance, getMikroStandardDeviation, getStandardDeviation, getVariance, getVisualizationComponent, setAverageCount, toString |
| Methods inherited from class com.rapidminer.operator.ResultObjectAdapter |
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addAction, getActions, getResultIcon, isSavable, log, logError, logNote, logWarning, save, toHTML, toResultString |
| Methods inherited from class com.rapidminer.operator.AbstractIOObject |
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copy, getLog, getSource, initWriting, read, setLoggingHandler, setSource, write |
| Methods inherited from class java.lang.Object |
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equals, finalize, getClass, hashCode, notify, notifyAll, wait, wait, wait |
| Methods inherited from interface com.rapidminer.operator.IOObject |
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copy, getLog, getSource, setLoggingHandler, setSource, write |
| Constructor Detail |
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public NormalizedAbsoluteError()
public NormalizedAbsoluteError(NormalizedAbsoluteError nae)
| Method Detail |
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public java.lang.String getName()
Averagable
getName in interface ResultObjectgetName in class Averagablepublic java.lang.String getDescription()
PerformanceCriterionPerformanceEvaluator operator.
getDescription in class PerformanceCriterionpublic double getExampleCount()
PerformanceCriterion
getExampleCount in class PerformanceCriterion
public void startCounting(ExampleSet exampleSet,
boolean useExampleWeights)
throws OperatorException
MeasuredPerformance
startCounting in class MeasuredPerformanceOperatorExceptionpublic void countExample(Example example)
countExample in class MeasuredPerformancepublic double getMikroAverage()
AveragableAveragable.buildSingleAverage(Averagable) was used, this method must return the
micro average from both (or more) criteria. This is usually achieved by
correctly implementing Averagable.buildSingleAverage(Averagable).
getMikroAverage in class Averagablepublic double getMikroVariance()
Averagable
getMikroVariance in class Averagablepublic double getFitness()
PerformanceCriterionReturns the fitness depending on the value. The fitness values will be used for all optimization purposes (feature space transformations, parameter optimizations...) and must always be maximized. Hence, if your criterion is better the smaller the value is you should return something like (-1 * value) or (1 / value).
Subclasses should use
Averagable.getAverage() instead of Averagable.getMikroAverage() in this method
since usually the makro average (if available) should be optmized instead
of the mikro average. The mikro average should only be used in the (rare)
cases where no makro average is available but this is automatically done
returned by Averagable.getAverage() in these cases.
getFitness in class PerformanceCriterionpublic void buildSingleAverage(Averagable performance)
AveragableAveragable.getMikroAverage() should return the
average of this and the given averagable. Hence, this method is used to build
the actual micro average value of two criteria. Please refer to
SimpleCriterion for a simple
implementation example.
buildSingleAverage in class Averagable
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