github

eriklindernoren / NapkinML

  • понедельник, 29 января 2018 г. в 03:15:16
https://github.com/eriklindernoren/NapkinML


A tiny lib with pocket-sized implementations of machine learning models in NumPy.



NapkinML

About

Pocket-sized implementations of machine learning models.

Table of Contents

Installation

$ git clone https://github.com/eriklindernoren/NapkinML
$ cd NapkinML
$ sudo python setup.py install

Implementations

K-Nearest Neighbors

class KNN():
    def predict(self, k, Xt, X, y):
        y_pred = np.empty(len(Xt))
        for i, xt in enumerate(Xt):
            idx = np.argsort([np.linalg.norm(x-xt) for x in X])[:k]
            y_pred[i] = np.bincount([y[i] for i in idx]).argmax()
        return y_pred
$ python napkin_ml/examples/knn.py

Figure: Classification of the Iris dataset with K-Nearest Neighbors.

Linear Regression

class LinearRegression():
    def fit(self, X, y):
        self.w = np.linalg.lstsq(X, y, rcond=None)[0]
    def predict(self, X):
        return X.dot(self.w)
$ python napkin_ml/examples/linear_regression.py

Figure: Linear Regression.

Linear Discriminant Analysis

class LDA():
    def fit(self, X, y):
        cov_sum = sum([np.cov(X[y == val], rowvar=False) for val in [0, 1]])
        mean_diff = X[y == 0].mean(0) - X[y == 1].mean(0)
        self.w = np.linalg.inv(cov_sum).dot(mean_diff)
    def predict(self, X):
        return 1 * (X.dot(self.w) < 0)
$ python napkin_ml/examples/lda.py

Logistic Regression

class LogisticRegression():
    def fit(self, X, y, n_iter=4000, lr=0.01):
        self.w = np.random.rand(X.shape[1])
        for _ in range(n_iter):
            self.w -= lr * (self.predict(X) - y).dot(X)
    def predict(self, X):
        return sigmoid(X.dot(self.w))
$ python napkin_ml/examples/logistic_regression.py

Figure: Classification with Logistic Regression.

Multilayer Perceptron

class MLP():
    def fit(self, X, y, n_epochs=4000, lr=0.01, n_units=10):
        self.w = np.random.rand(X.shape[1], n_units)
        self.v = np.random.rand(n_units, y.shape[1])
        for _ in range(n_epochs):
            h_out = sigmoid(X.dot(self.w))
            out = softmax(h_out.dot(self.v))
            self.v -= lr * h_out.T.dot(out - y)
            self.w -= lr * X.T.dot((out - y).dot(self.v.T) * (h_out * (1 - h_out)))
    def predict(self, X):
        return softmax(sigmoid(X.dot(self.w)).dot(self.v))
$ python napkin_ml/examples/mlp.py

Figure: Classification of the Iris dataset with a Multilayer Perceptron
with one hidden layer.

Principal Component Analysis

class PCA():
    def transform(self, X, dim):
        _, S, V = np.linalg.svd(X - X.mean(0), full_matrices=True)
        idx = S.argsort()[::-1]
        V = V[idx][:dim]
        return X.dot(V.T)
$ python napkin_ml/examples/pca.py

Figure: Dimensionality reduction with Principal Component Analysis.