Compare commits
4 Commits
german_cos
...
iris_acc_K
| Author | SHA1 | Date | |
|---|---|---|---|
|
|
75247d1cb5 | ||
|
|
361e9bcf99 | ||
|
|
13565a3f95 | ||
|
|
9aeefbeb9b |
@@ -89,10 +89,10 @@ lE =
|
||||
maxDepth = 5,
|
||||
weights =
|
||||
ExpressionWeights
|
||||
{ lambdaSpucker = 1,
|
||||
lambdaSchlucker = 2,
|
||||
symbol = 30,
|
||||
variable = 10,
|
||||
{ lambdaSpucker = 0,
|
||||
lambdaSchlucker = 10,
|
||||
symbol = 100,
|
||||
variable = 5,
|
||||
constant = 5
|
||||
}
|
||||
}
|
||||
@@ -189,7 +189,7 @@ 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 = acc * 100 + (biasSmall - 1),
|
||||
fitnessTotal = fitness',
|
||||
fitnessMean = meanOfAccuricyPerClass resAndTarget,
|
||||
fitnessGeoMean = geomeanOfDistributionAccuracy resAndTarget,
|
||||
|
||||
@@ -56,10 +56,10 @@ lE =
|
||||
maxDepth = 5,
|
||||
weights =
|
||||
ExpressionWeights
|
||||
{ lambdaSpucker = 1,
|
||||
lambdaSchlucker = 2,
|
||||
symbol = 30,
|
||||
variable = 10,
|
||||
{ lambdaSpucker = 0,
|
||||
lambdaSchlucker = 10,
|
||||
symbol = 100,
|
||||
variable = 5,
|
||||
constant = 5
|
||||
}
|
||||
}
|
||||
@@ -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,
|
||||
|
||||
@@ -77,10 +77,10 @@ lE =
|
||||
maxDepth = 5,
|
||||
weights =
|
||||
ExpressionWeights
|
||||
{ lambdaSpucker = 1,
|
||||
lambdaSchlucker = 2,
|
||||
symbol = 30,
|
||||
variable = 10,
|
||||
{ lambdaSpucker = 0,
|
||||
lambdaSchlucker = 10,
|
||||
symbol = 100,
|
||||
variable = 5,
|
||||
constant = 5
|
||||
}
|
||||
}
|
||||
|
||||
@@ -35,7 +35,7 @@ options =
|
||||
( long "population-size"
|
||||
<> short 'p'
|
||||
<> metavar "N"
|
||||
<> value 400
|
||||
<> value 100
|
||||
<> help "Population size"
|
||||
)
|
||||
|
||||
@@ -59,7 +59,7 @@ main =
|
||||
selectionType = Tournament 3,
|
||||
termination = (steps (iterations opts)),
|
||||
poulationSize = (populationSize opts),
|
||||
stepSize = 120,
|
||||
stepSize = 90,
|
||||
elitismRatio = 5/100
|
||||
}
|
||||
pop' <- runEffect (for (run cfg) logCsv)
|
||||
|
||||
Reference in New Issue
Block a user