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3 Commits

Author SHA1 Message Date
Johannes Merl
7ced1e10e9 german with cost matrix 2024-05-12 07:46:51 +02:00
Johannes Merl
dd513aef57 fix fittness 2024-05-11 19:45:03 +02:00
Johannes Merl
b42179cfcc fix Iris 2024-05-09 10:54:08 +02:00
2 changed files with 8 additions and 5 deletions

View File

@@ -151,6 +151,7 @@ data LamdaExecutionEnv = LamdaExecutionEnv
data FittnesRes = FittnesRes
{ total :: R,
fitnessTotal :: R,
costAccordingToDataset :: N,
fitnessGeoMean :: R,
fitnessMean :: R,
accuracy :: R,
@@ -189,8 +190,9 @@ evalResults ex trs = do
evalResult :: LamdaExecutionEnv -> TypeRequester -> (AccountStatus -> Int -> CreditHistory -> Purpose -> Int -> Savings -> EmploymentStatus -> Int -> StatusAndSex -> OtherDebtors -> Int -> Property -> Int -> OtherPlans -> Housing -> Int -> Job -> Int -> Bool -> Bool -> GermanClass) -> (TypeRequester, FittnesRes)
evalResult ex tr result = ( tr,
FittnesRes
{ total = score,
{ total = (biasSmall - 1) - (fromIntegral costAccordingToDS),
fitnessTotal = fitness',
costAccordingToDataset = costAccordingToDS,
fitnessMean = meanOfAccuricyPerClass resAndTarget,
fitnessGeoMean = geomeanOfDistributionAccuracy resAndTarget,
accuracy = acc,
@@ -201,7 +203,8 @@ evalResult ex tr result = ( tr,
where
res = map (\(a, b, c, d, e, f, g, h, i, j, k, l, m, n, o, p, q, r, s, t) -> result a b c d e f g h i j k l m n o p q r s t) (fst (dset ex))
resAndTarget = (zip (snd (dset ex)) res)
acc = (foldr (\ts s -> if ((fst ts) == (snd ts)) then s + 1 else s) 0 resAndTarget) / fromIntegral (length resAndTarget)
acc = (foldr (\(actual,predicted) s -> if (actual == predicted) then s + 1 else s) 0 resAndTarget) / fromIntegral (length resAndTarget)
costAccordingToDS = (foldr (\(actual,predicted) s -> if ((actual) == (predicted)) then s else (if actual == Deny then s+5 else s+1)) 0 resAndTarget)
biasSmall = exp ((-(fromIntegral (countTrsR tr))) / 1000) -- 0 (schlecht) bis 1 (gut)
fitness' = meanOfAccuricyPerClass resAndTarget
score = fitness' + (biasSmall - 1)

View File

@@ -68,7 +68,7 @@ lEE :: LamdaExecutionEnv
lEE =
LamdaExecutionEnv
{ -- For now these need to define all available functions and types. Generic functions can be used.
imports = ["LambdaDatasets.IrisDataset"],
imports = ["LambdaDatasets.IrisDefinition"],
training = True,
trainingData =
( map fst (takeFraktion 0.8 irisTrainingData),
@@ -89,7 +89,7 @@ shuffledLEE = do
itD <- smpl $ shuffle irisTrainingData
return LamdaExecutionEnv
{ -- For now these need to define all available functions and types. Generic functions can be used.
imports = ["LambdaDatasets.IrisDataset"],
imports = ["LambdaDatasets.IrisDefinition"],
training = True,
trainingData =
( map fst (takeFraktion 0.8 itD),
@@ -155,7 +155,7 @@ evalResults ex trs = do
evalResult :: LamdaExecutionEnv -> TypeRequester -> (Float -> Float -> Float -> Float -> IrisClass) -> (TypeRequester, FittnesRes)
evalResult ex tr result = ( tr,
FittnesRes
{ total = score,
{ total = acc * 100 + (biasSmall - 1),
fitnessTotal = fitness',
fitnessMean = meanOfAccuricyPerClass resAndTarget,
fitnessGeoMean = geomeanOfDistributionAccuracy resAndTarget,