Ejemplo n.º 1
0
 def updateStatsForPredictor(self,predictedValue:float,instance:Instance):
     if not instance.classIsMissing():
         self.m_WithClass+=instance.weight()
         if Utils.isMissingValue(predictedValue):
             self.m_Unclassified+=instance.weight()
             return
         self.m_SumClass+=instance.weight()*instance.classValue()
         self.m_SumSqrClass+=instance.weight()*instance.classValue()*instance.classValue()
         self.m_SumClassPredicted+=instance.weight()*instance.classValue()*predictedValue
         self.m_SumPredicted+=instance.weight()*predictedValue
         self.m_SumSqrPredicted+=instance.weight()*predictedValue*predictedValue
         self.updateNumericScores(self.makeDistribution(predictedValue),self.makeDistribution(instance.classValue()),instance.weight())
     else:
         self.m_MissingClass+=instance.weight()
Ejemplo n.º 2
0
 def updateStatsForClassifier(self,predictedDistribution:List,instance:Instance):
     actualClass=instance.classValue()
     if not instance.classIsMissing():
         self.updateMargins(predictedDistribution,actualClass,instance.weight())
         predictedClass=-1
         bestProb=0
         for i in range(self.m_NumClasses):
             if predictedDistribution[i] > bestProb:
                 predictedClass=i
                 bestProb=predictedDistribution[i]
         self.m_WithClass+=instance.weight()
         if predictedClass < 0:
             self.m_Unclassified+=instance.weight()
             return
         predictedProb=max(float('-inf'),predictedDistribution[actualClass])
         priorProb=max(float('-inf'),self.m_ClassPriors[actualClass]/self.m_ClassPriorsSum)
         if predictedProb >= priorProb:
             self.m_SumKBInfo+= (Utils.log2(predictedProb) - Utils.log2(priorProb)) * instance.weight()
         else:
             self.m_SumKBInfo-= (Utils.log2(1 - predictedProb) - Utils.log2(1 - priorProb)) * instance.weight()
         self.m_SumSchemeEntropy-= Utils.log2(predictedProb) * instance.weight()
         self.m_SumPriorEntropy-= Utils.log2(priorProb) * instance.weight()
         self.updateNumericScores(predictedDistribution,self.makeDistribution(instance.classValue()),instance.weight())
         indices= Utils.stableSort(predictedDistribution)
         sum=sizeOfregions=0
         for i in range(len(predictedDistribution)-1,-1,-1):
             if sum >= self.m_ConfLevel:
                 break
             sum+=predictedDistribution[indices[i]]
             sizeOfregions+=1
             if actualClass == indices[i]:
                 self.m_TotalCoverage+=instance.weight()
         self.m_TotalSizeOfRegions+=instance.weight()*sizeOfregions/(self.m_MaxTarget-self.m_MinTarget)
         self.m_ConfusionMatrix[actualClass][predictedClass]+=instance.weight()
         if predictedClass != actualClass:
             self.m_Incorrect+=instance.weight()
         else:
             self.m_Correct+=instance.weight()
     else:
         self.m_MissingClass+=instance.weight()
Ejemplo n.º 3
0
    def evaluationForSingleInstance(self, a0, instance:Instance, storePredictions:bool):
        if isinstance(a0,List):
            if self.m_ClassIsNominal:
                pred= Utils.maxIndex(a0)
                if a0[int(pred)] <= 0:
                    pred= Utils.missingValue()
                self.updateStatsForClassifier(a0, instance)
                if storePredictions and not self.m_DiscardPredictions:
                    if self.m_Predictions is None:
                        self.m_Predictions=[]
                    self.m_Predictions.append(NominalPrediction(instance.classValue(), a0, instance.weight()))
            else:
                pred=a0[0]
                self.updateStatsForPredictor(pred,instance)
                if storePredictions and not self.m_DiscardPredictions:
                    if self.m_Predictions is None:
                        self.m_Predictions=[]
                    self.m_Predictions.append(NumericPrediction(instance.classValue(),pred,instance.weight()))
            return pred
        elif isinstance(a0,Classifier):
            classMissing=copy.deepcopy(instance)
            classMissing.setDataset(instance.dataset())
            #TODO
            # if isinstance(a0,InputMappedClassifier)
            # else:
            classMissing.setClassMissing()
            # print("isMiss: ", instance.value(5))

            pred=self.evaluationForSingleInstance(a0.distributionForInstance(classMissing),instance,storePredictions)
            if not self.m_ClassIsNominal:
                if not instance.classIsMissing() and not Utils.isMissingValue(pred):
                    if isinstance(a0,IntervalEstimator):
                        self.updateStatsForIntervalEstimator(a0,classMissing,instance.classValue())
                    else:
                        self.m_CoverageStatisticsAvailable=False
                    if isinstance(a0,ConditionalDensityEstimator):
                        self.updateStatsForConditionalDensityEstimator(a0,classMissing,instance.classValue())
                    else:
                        self.m_ComplexityStatisticsAvailable=False
            return pred