Exemplo n.º 1
0
def test_adapt_single_model(population_strategy: PopulationStrategy):
    n = 10
    df = pd.DataFrame([{"s": np.random.rand()} for _ in range(n)])
    w = np.ones(n) / n
    kernel = MultivariateNormalTransition()
    kernel.fit(df, w)

    population_strategy.adapt_population_size([kernel], np.array([1.]))
    assert population_strategy.nr_particles > 0
Exemplo n.º 2
0
def test_adapt_two_models(population_strategy: PopulationStrategy):
    n = 10
    kernels = []
    for _ in range(2):
        df = pd.DataFrame([{"s": np.random.rand()} for _ in range(n)])
        w = np.ones(n) / n
        kernel = MultivariateNormalTransition()
        kernel.fit(df, w)
        kernels.append(kernel)

    population_strategy.adapt_population_size(kernels, np.array([.7, .2]))
    assert population_strategy.nr_particles > 0
Exemplo n.º 3
0
def test_no_parameters(population_strategy: PopulationStrategy):
    n = 10
    df = pd.DataFrame(index=list(range(n)))
    w = np.ones(n) / n

    kernels = []
    for _ in range(2):
        kernel = MultivariateNormalTransition()
        kernel.fit(df, w)
        kernels.append(kernel)

    population_strategy.adapt_population_size(kernels, np.array([.7, .3]))
    assert population_strategy.nr_particles > 0
Exemplo n.º 4
0
def test_no_parameters(population_strategy: PopulationStrategy):
    n = 10
    df = pd.DataFrame(index=list(range(n)))
    w = np.ones(n) / n

    kernels = []
    for _ in range(2):
        kernel = MultivariateNormalTransition()
        kernel.fit(df, w)
        kernels.append(kernel)

    population_strategy.update(kernels, np.array([0.7, 0.3]), t=0)
    assert population_strategy(t=0) > 0
Exemplo n.º 5
0
def test_one_with_one_without_parameters(
        population_strategy: PopulationStrategy):
    n = 10
    kernels = []

    df_without = pd.DataFrame(index=list(range(n)))
    w_without = np.ones(n) / n
    kernel_without = MultivariateNormalTransition()
    kernel_without.fit(df_without, w_without)
    kernels.append(kernel_without)

    df_with = pd.DataFrame([{"s": np.random.rand()} for _ in range(n)])
    w_with = np.ones(n) / n
    kernel_with = MultivariateNormalTransition()
    kernel_with.fit(df_with, w_with)
    kernels.append(kernel_with)

    population_strategy.adapt_population_size(kernels, np.array([.7, .3]))
    assert population_strategy.nr_particles > 0
Exemplo n.º 6
0
def test_transitions_not_modified(population_strategy: PopulationStrategy):
    n = 10
    kernels = []
    test_points = pd.DataFrame([{"s": np.random.rand()} for _ in range(n)])

    for _ in range(2):
        df = pd.DataFrame([{"s": np.random.rand()} for _ in range(n)])
        w = np.ones(n) / n
        kernel = MultivariateNormalTransition()
        kernel.fit(df, w)
        kernels.append(kernel)

    test_weights = [k.pdf(test_points) for k in kernels]

    population_strategy.adapt_population_size(kernels, np.array([.7, .2]))

    after_adaptation_weights = [k.pdf(test_points) for k in kernels]

    same = all([(k1 == k2).all()
                for k1, k2 in zip(test_weights, after_adaptation_weights)])
    err_msg = ("Population strategy {}"
               " modified the transitions".format(population_strategy))

    assert same, err_msg