Created
April 23, 2015 02:40
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import System.Environment | |
import Control.Applicative | |
import Data.Maybe | |
import Data.List | |
import Data.List.Split | |
import Data.Map.Strict ((!), Map, fromList) | |
type Class = String | |
type Mean = Double | |
type StdDevSquared = Double | |
type Feature = Double | |
type Probability = Double | |
data Instance = Instance | |
{ getClass :: Class | |
, getFeatures :: [Feature] | |
} deriving Show | |
data BayesClassifier = BayesClassifier | |
{ getClasses :: [Class] | |
, getClassProbabilities :: Map Class Probability | |
, getGaussianDistributions :: Map Class [(Mean, StdDevSquared)] | |
} deriving Show | |
main :: IO () | |
main = do | |
file <- fromMaybe "iris.arff" . listToMaybe <$> getArgs | |
data_matrix <- dataFilter <$> readFile file | |
let instances = do | |
row <- data_matrix | |
let cls = last row | |
let features = map readDouble $ init row | |
return (Instance cls features) | |
let classifier = trainClassifier instances | |
let classifications = map (classify classifier) instances | |
-- Print classifications | |
mapM_ putStrLn $ zipWith format instances classifications | |
-- Print stats | |
let (correct', incorrect') = partition (uncurry (==)) (zip (map getClass instances) classifications) | |
let (correct, incorrect) = (length correct', length incorrect') | |
let percentage = 100 * (fromIntegral correct / fromIntegral (correct + incorrect) :: Double) | |
putStrLn "" | |
putStrLn $ "Correct: " ++ show correct | |
putStrLn $ "Incorrect: " ++ show incorrect | |
putStrLn $ "Total: " ++ show (correct + incorrect) | |
putStrLn $ "Percentage correct: " ++ show percentage | |
where | |
skip :: String -> Bool | |
skip x = not (null x) && head x `notElem` "%@" | |
dataFilter :: String -> [[String]] | |
dataFilter = map (splitOn ",") . filter skip . lines | |
readDouble :: String -> Double | |
readDouble = read | |
format :: Instance -> Class -> String | |
format (Instance c fs) c' = "Predicting class " ++ c' | |
++ " for instance " ++ show fs | |
++ ", class: " ++ c | |
++ " -- " ++ (if c == c' then "Correct!" else "Incorrect") | |
trainClassifier :: [Instance] -> BayesClassifier | |
trainClassifier instances = BayesClassifier uniqueClasses classProbs probabilityDistributions | |
where | |
uniqueClasses :: [Class] | |
uniqueClasses = nub $ map getClass instances | |
classProbs :: Map Class Probability | |
classProbs = fromList $ do | |
c <- uniqueClasses | |
return (c, classProbability c instances) | |
probabilityDistributions :: Map Class [(Mean, StdDevSquared)] | |
probabilityDistributions = fromList $ do | |
c <- uniqueClasses | |
-- These are the training set instances that belong to class c | |
let classInstances = instancesByClass c instances | |
-- we transpose this so we can group the same features together | |
-- (i.e. a list of the first column, second column, etc.) | |
let features = transpose $ map getFeatures classInstances | |
let means = map mean features | |
let sigmaSquareds = map stdDevSquared features | |
return (c, zip means sigmaSquareds) | |
instancesByClass :: Class -> [Instance] -> [Instance] | |
instancesByClass c = filter ((== c) . getClass) | |
classProbability :: Class -> [Instance] -> Probability | |
classProbability c is = instances_of_class / number_of_classes | |
where | |
instances_of_class = (fromIntegral . length . instancesByClass c) is | |
number_of_classes = (fromIntegral . length) is | |
mean :: [Feature] -> Mean | |
mean xs = sum xs / fromIntegral (length xs) | |
stdDevSquared :: [Feature] -> StdDevSquared | |
stdDevSquared xs = mean xs' | |
where | |
xs' = map ((**2) . subtract (mean xs)) xs | |
classify :: BayesClassifier -> Instance -> Class | |
classify classifier instanceData = fst $ foldr1 argmax $ do | |
c <- getClasses classifier | |
let classProbability = getClassProbabilities classifier ! c | |
let distributions = getGaussianDistributions classifier ! c | |
let condProbabilities = zipWith ($) (map (uncurry probabilityDensity) distributions) (getFeatures instanceData) | |
let totalProbability = classProbability * product condProbabilities | |
return (c, totalProbability) | |
where | |
probabilityDensity :: Mean -> StdDevSquared -> Feature -> Probability | |
probabilityDensity classMean sigmaSquared attr = fractional * exponential | |
where | |
sigmaSquaredCorrected = sigmaSquared + 0.00000001 | |
fractional = 1 / sqrt (2 * pi * sigmaSquaredCorrected) | |
exponential = exp ((-((attr - classMean) ** 2)) / (2 * sigmaSquaredCorrected)) | |
argmax :: (Ord b) => (a, b) -> (a, b) -> (a, b) | |
argmax a1@(_, x) a2@(_, y) = if x >= y then a1 else a2 |
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