test_learning.py 1,76 ko
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from learning import parse_csv, weighted_mode, weighted_replicate, DataSet, \
                     PluralityLearner, NaiveBayesLearner, NearestNeighborLearner, \
                     NeuralNetLearner, PerceptronLearner, DecisionTreeLearner
from utils import DataFile
    Iris = DataFile('iris.csv').read()
    assert parse_csv(Iris)[0] == [5.1,3.5,1.4,0.2,'setosa']
    assert weighted_mode('abbaa', [1, 2, 3, 1, 2]) == 'b'
    assert weighted_replicate('ABC', [1, 2, 1], 4) == ['A', 'B', 'B', 'C']
def test_plurality_learner():
    zoo = DataSet(name="zoo")

    pL = PluralityLearner(zoo)
    assert pL([1, 0, 0, 1, 0, 0, 0, 1, 1, 1, 0, 0, 4, 1, 0, 1]) == "mammal"
def test_naive_bayes():
    iris = DataSet(name="iris")

    nB = NaiveBayesLearner(iris)
    assert nB([5,3,1,0.1]) == "setosa"

def test_k_nearest_neighbors():
    iris = DataSet(name="iris")

    kNN = NearestNeighborLearner(iris,k=3)
    assert kNN([5,3,1,0.1]) == "setosa"

def test_decision_tree_learner():
    iris = DataSet(name="iris")

    dTL = DecisionTreeLearner(iris)
    assert dTL([5,3,1,0.1]) == "setosa"


def test_neural_network_learner():
    iris = DataSet(name="iris")
    classes = ["setosa","versicolor","virginica"]

    iris.classes_to_numbers()

    nNL = NeuralNetLearner(iris)
    # NeuralNetLearner might be wrong. Just check if prediction is in range
    assert nNL([5,3,1,0.1]) in range(len(classes))


def test_perceptron():
    iris = DataSet(name="iris")
    classes = ["setosa","versicolor","virginica"]

    iris.classes_to_numbers()

    perceptron = PerceptronLearner(iris)
    # PerceptronLearner might be wrong. Just check if prediction is in range
    assert perceptron([5,3,1,0.1]) in range(len(classes))