Package org.deidentifier.arx.metric.v2
Klasse MetricMDHeight
java.lang.Object
org.deidentifier.arx.metric.Metric<AbstractILMultiDimensional>
org.deidentifier.arx.metric.v2.AbstractMetricMultiDimensional
org.deidentifier.arx.metric.v2.MetricMDHeight
- Alle implementierten Schnittstellen:
Serializable
This class provides an implementation of the Height metric.
TODO: Add reference
- Siehe auch:
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Verschachtelte Klassen - Übersicht
Von Klasse geerbte verschachtelte Klassen/Schnittstellen org.deidentifier.arx.metric.Metric
Metric.AggregateFunction -
Feldübersicht
Von Klasse geerbte Felder org.deidentifier.arx.metric.v2.AbstractMetricMultiDimensional
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Konstruktorübersicht
KonstruktorenModifiziererKonstruktorBeschreibungprotectedCreates a new instance.protectedMetricMDHeight(Metric.AggregateFunction function) Creates a new instance. -
Methodenübersicht
Modifizierer und TypMethodeBeschreibungReturns the configuration of this metric.protected ILMultiDimensionalWithBoundgetInformationLossInternal(Transformation<?> node, HashGroupify g) Evaluates the metric for the given node.protected ILMultiDimensionalWithBoundgetInformationLossInternal(Transformation<?> node, HashGroupifyEntry entry) Returns the information loss that would be induced by suppressing the given entry.protected AbstractILMultiDimensionalgetLowerBoundInternal(Transformation<?> node) Returns a lower bound for the information loss for the given node.protected AbstractILMultiDimensionalgetLowerBoundInternal(Transformation<?> node, HashGroupify groupify) Returns a lower bound for the information loss for the given node.voidinitialize(int minHeight, int maxHeight) For backwards compatibility only.protected voidinitializeInternal(DataManager manager, DataDefinition definition, Data input, GeneralizationHierarchy[] hierarchies, ARXConfiguration config) Implement this to initialize the metric.render(ARXConfiguration config) Renders the privacy modeltoString()Returns the name of metric.Von Klasse geerbte Methoden org.deidentifier.arx.metric.v2.AbstractMetricMultiDimensional
createInformationLoss, createMaxInformationLoss, createMinInformationLoss, getAggregateFunction, getAggregationFunctionsGeneralized, getAggregationFunctionsNonGeneralized, getAggregationIndicesGeneralized, getAggregationIndicesNonGeneralized, getAggregationInformation, getDimensions, getDimensionsAggregated, getDimensionsGeneralized, initialize, setMax, setMinVon Klasse geerbte Methoden org.deidentifier.arx.metric.Metric
createAECSMetric, createAECSMetric, createAmbiguityMetric, createClassificationMetric, createClassificationMetric, createDiscernabilityMetric, createDiscernabilityMetric, createEntropyBasedInformationLossMetric, createEntropyBasedInformationLossMetric, createEntropyMetric, createEntropyMetric, createEntropyMetric, createEntropyMetric, createEntropyMetric, createEntropyMetric, createHeightMetric, createHeightMetric, createInstanceOfHighestScore, createInstanceOfLowestScore, createKLDivergenceMetric, createLossMetric, createLossMetric, createLossMetric, createLossMetric, createMetric, createNormalizedEntropyMetric, createNormalizedEntropyMetric, createPrecisionMetric, createPrecisionMetric, createPrecisionMetric, createPrecisionMetric, createPrecisionMetric, createPrecisionMetric, createPrecisionMetric, createPrecisionMetric, createPrecomputedEntropyMetric, createPrecomputedEntropyMetric, createPrecomputedEntropyMetric, createPrecomputedEntropyMetric, createPrecomputedEntropyMetric, createPrecomputedEntropyMetric, createPrecomputedLossMetric, createPrecomputedLossMetric, createPrecomputedLossMetric, createPrecomputedLossMetric, createPrecomputedNormalizedEntropyMetric, createPrecomputedNormalizedEntropyMetric, createPublisherPayoutMetric, createPublisherPayoutMetric, createStaticMetric, createStaticMetric, getDescription, getDescription, getGeneralizationFactor, getGeneralizationSuppressionFactor, getInformationLoss, getInformationLoss, getLowerBound, getLowerBound, getName, getNumRecords, getScore, getSubset, getSuppressionFactor, initialize, isAbleToHandleClusteredMicroaggregation, isAbleToHandleMicroaggregation, isGSFactorSupported, isIndependent, isMonotonic, isMonotonicWithGeneralization, isMonotonicWithSuppression, isMultiDimensional, isPrecomputed, isScoreFunctionSupported, isWeighted, list, round
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Konstruktordetails
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MetricMDHeight
protected MetricMDHeight()Creates a new instance. -
MetricMDHeight
Creates a new instance.- Parameter:
function-
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Methodendetails
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getConfiguration
Returns the configuration of this metric.- Setzt außer Kraft:
getConfigurationin KlasseMetric<AbstractILMultiDimensional>- Gibt zurück:
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initialize
public void initialize(int minHeight, int maxHeight) For backwards compatibility only.- Parameter:
minHeight-maxHeight-
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render
Beschreibung aus Klasse kopiert:MetricRenders the privacy model- Angegeben von:
renderin KlasseMetric<AbstractILMultiDimensional>- Gibt zurück:
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toString
Beschreibung aus Klasse kopiert:MetricReturns the name of metric.- Setzt außer Kraft:
toStringin KlasseMetric<AbstractILMultiDimensional>- Gibt zurück:
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getInformationLossInternal
protected ILMultiDimensionalWithBound getInformationLossInternal(Transformation<?> node, HashGroupify g) Beschreibung aus Klasse kopiert:MetricEvaluates the metric for the given node.- Angegeben von:
getInformationLossInternalin KlasseMetric<AbstractILMultiDimensional>- Parameter:
node- The node for which to compute the information lossg- The groupify operator of the previous check- Gibt zurück:
- the double
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getInformationLossInternal
protected ILMultiDimensionalWithBound getInformationLossInternal(Transformation<?> node, HashGroupifyEntry entry) Beschreibung aus Klasse kopiert:MetricReturns the information loss that would be induced by suppressing the given entry. The loss is not necessarily consistent with the loss that is computed bygetInformationLoss(node, groupify)but is guaranteed to be comparable for different entries from the same groupify operator.- Angegeben von:
getInformationLossInternalin KlasseMetric<AbstractILMultiDimensional>- Parameter:
entry-- Gibt zurück:
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getLowerBoundInternal
Beschreibung aus Klasse kopiert:MetricReturns a lower bound for the information loss for the given node. This can be used to expose the results of monotonic shares of a metric, which can significantly speed-up the anonymization process. If no such metric exists, simply returnnull.- Angegeben von:
getLowerBoundInternalin KlasseMetric<AbstractILMultiDimensional>- Parameter:
node-- Gibt zurück:
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getLowerBoundInternal
protected AbstractILMultiDimensional getLowerBoundInternal(Transformation<?> node, HashGroupify groupify) Beschreibung aus Klasse kopiert:MetricReturns a lower bound for the information loss for the given node. This can be used to expose the results of monotonic shares of a metric, which can significantly speed-up the anonymization process. If no such metric exists, simply returnnull.
This variant of the method allows computing a monotonic share based on a groupified data representation. IMPORTANT NOTE: The groups may not have been classified correctly when the method is called, i.e., HashGroupifyEntry.isNotOutlier may not be set correctly!- Angegeben von:
getLowerBoundInternalin KlasseMetric<AbstractILMultiDimensional>- Parameter:
node-groupify-- Gibt zurück:
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initializeInternal
protected void initializeInternal(DataManager manager, DataDefinition definition, Data input, GeneralizationHierarchy[] hierarchies, ARXConfiguration config) Beschreibung aus Klasse kopiert:MetricImplement this to initialize the metric.- Setzt außer Kraft:
initializeInternalin KlasseAbstractMetricMultiDimensional- Parameter:
manager-definition-input-hierarchies-config-
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