sibe ==== A simple Machine Learning library. ## Simple neural network ```haskell import Numeric.Sibe let a = (sigmoid, sigmoid') -- activation function -- random network, seed 0, values between -1 and 1, -- two inputs, two nodes in hidden layer and a single output rnetwork = randomNetwork 0 (-1, 1) 2 [(2, a)] (1, a) -- inputs and labels inputs = [vector [0, 1], vector [1, 0], vector [1, 1], vector [0, 0]] labels = [vector [1], vector [1], vector [0], vector [0]] -- define the session which includes parameters session = def { network = rnetwork , learningRate = 0.5 , epochs = 1000 , training = zip inputs labels , test = zip inputs labels , drawChart = True , chartName = "nn.png" -- draws chart of loss over time } :: Session initialCost = crossEntropy session -- run gradient descent -- you can also use `sgd`, see the notmnist example newsession <- run gd session let results = map (`forward` newsession) inputs rounded = map (map round . toList) results cost = crossEntropy newsession putStrLn $ "- initial cost (cross-entropy): " ++ show initialCost putStrLn $ "- actual result: " ++ show results putStrLn $ "- rounded result: " ++ show rounded putStrLn $ "- cost (cross-entropy): " ++ show cost ``` ## Examples ```bash # neural network examples stack exec example-xor stack exec example-424 # notMNIST dataset, achieves ~87.5% accuracy after 9 epochs stack exec example-notmnist # Naive Bayes document classifier, using Reuters dataset # using Porter stemming, stopword elimination and a few custom techniques. # The dataset is imbalanced which causes the classifier to be biased towards some classes (earn, acq, ...) # to workaround the imbalanced dataset problem, there is a --top-ten option which classifies only top 10 popular # classes, with evenly split datasets (100 for each), this increases F Measure significantly, along with ~10% of improved accuracy # N-Grams don't seem to help us much here (or maybe my implementation is wrong!), using bigrams increases # accuracy, while decreasing F-Measure slightly. stack exec example-naivebayes-doc-classifier -- --verbose stack exec example-naivebayes-doc-classifier -- --verbose --top-ten ``` ### notMNIST notMNIST dataset, sigmoid hidden layer, cross-entropy loss, learning rate decay and sgd ([`notmnist.hs`](https://github.com/mdibaiee/sibe/blob/master/examples/notmnist.hs)): ![notMNIST](https://github.com/mdibaiee/sibe/blob/master/notmnist.png?raw=true) notMNIST dataset, relu hidden layer, cross-entropy loss, learning rate decay and sgd ([`notmnist.hs`](https://github.com/mdibaiee/sibe/blob/master/examples/notmnist.hs)): ![notMNIST](https://github.com/mdibaiee/sibe/blob/master/notmnist-relu.png?raw=true) ### Word2Vec word2vec on a very small sample text: ``` the king loves the queen the queen loves the king, the dwarf hates the king the queen hates the dwarf the dwarf poisons the king the dwarf poisons the queen the man loves the woman the woman loves the man, the thief hates the man the woman hates the thief the thief robs the man the thief robs the woman ``` The computed vectors are transformed to two dimensions using PCA: `king` and `queen` have a relation with `man` and `woman`, `love` and `hate` are close to each other, and `dwarf` and `thief` have a relation with `poisons` and `robs`, also, `dwarf` is close to `queen` and `king` while `thief` is closer to `man` and `woman`. `the` doesn't relate to anything. ![word2vec results](https://raw.githubusercontent.com/mdibaiee/sibe/master/w2v.png) _You can reproduce this result using these parameters:_ ```haskell let session = def { learningRate = 0.1 , batchSize = 1 , epochs = 10000 , debug = True } :: Session w2v = def { docs = ds , dimensions = 30 , method = SkipGram , window = 2 , w2vDrawChart = True , w2vChartName = "w2v.png" } :: Word2Vec ``` This is a very small development dataset and I have to test it on larger datasets.