Class AsymmetricLoss
- java.lang.Object
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- ai.libs.jaicore.ml.classification.loss.dataset.APredictionPerformanceMeasure<java.lang.Double,org.api4.java.ai.ml.regression.evaluation.IRegressionPrediction>
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- ai.libs.jaicore.ml.regression.loss.dataset.ARegressionMeasure
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- ai.libs.jaicore.ml.regression.loss.dataset.AsymmetricLoss
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- All Implemented Interfaces:
org.api4.java.ai.ml.core.evaluation.supervised.loss.IDeterministicPredictionPerformanceMeasure<java.lang.Double,org.api4.java.ai.ml.regression.evaluation.IRegressionPrediction>
public class AsymmetricLoss extends ARegressionMeasure
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Constructor Summary
Constructors Constructor Description AsymmetricLoss()AsymmetricLoss(double dividerUnderestimation, double dividerOverestimation)
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Method Summary
All Methods Instance Methods Concrete Methods Modifier and Type Method Description doubleloss(java.util.List<? extends java.lang.Double> expected, java.util.List<? extends org.api4.java.ai.ml.regression.evaluation.IRegressionPrediction> predicted)If this performance measure is originally a score function its score is transformed into a loss by multiplying the score with -1.-
Methods inherited from class ai.libs.jaicore.ml.classification.loss.dataset.APredictionPerformanceMeasure
averageInstanceWiseLoss, averageInstanceWiseScore, checkConsistency, loss, score, score
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Method Detail
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loss
public double loss(java.util.List<? extends java.lang.Double> expected, java.util.List<? extends org.api4.java.ai.ml.regression.evaluation.IRegressionPrediction> predicted)Description copied from class:APredictionPerformanceMeasureIf this performance measure is originally a score function its score is transformed into a loss by multiplying the score with -1. (loss=-score).- Specified by:
lossin interfaceorg.api4.java.ai.ml.core.evaluation.supervised.loss.IDeterministicPredictionPerformanceMeasure<java.lang.Double,org.api4.java.ai.ml.regression.evaluation.IRegressionPrediction>- Overrides:
lossin classAPredictionPerformanceMeasure<java.lang.Double,org.api4.java.ai.ml.regression.evaluation.IRegressionPrediction>
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