Ejemplo n.º 1
0
    def test_init(self):
        assets_num = 100
        samples_num = 1000
        correlation = 0.37
        epsilons = scientific.make_epsilons(
            numpy.zeros((assets_num, samples_num)),
            seed=17, correlation=correlation)
        self.dist = scientific.LogNormalDistribution(epsilons)

        tol = 0.1
        for a1, a2 in scientific.pairwise(range(assets_num)):
            coeffs = numpy.corrcoef(
                self.dist.epsilons[a1, :], self.dist.epsilons[a2, :])

            numpy.testing.assert_allclose([1, 1], [coeffs[0, 0], coeffs[1, 1]])
            numpy.testing.assert_allclose(
                correlation, coeffs[0, 1], rtol=0, atol=tol)
            numpy.testing.assert_allclose(
                correlation, coeffs[1, 0], rtol=0, atol=tol)
Ejemplo n.º 2
0
    def test_init(self):
        assets_num = 100
        samples_num = 1000
        correlation = 0.37
        epsilons = scientific.make_epsilons(
            numpy.zeros((assets_num, samples_num)),
            seed=17, correlation=correlation)
        self.dist = scientific.LogNormalDistribution(epsilons)

        tol = 0.1
        for a1, a2 in scientific.pairwise(range(assets_num)):
            coeffs = numpy.corrcoef(
                self.dist.epsilons[a1, :], self.dist.epsilons[a2, :])

            numpy.testing.assert_allclose([1, 1], [coeffs[0, 0], coeffs[1, 1]])
            numpy.testing.assert_allclose(
                correlation, coeffs[0, 1], rtol=0, atol=tol)
            numpy.testing.assert_allclose(
                correlation, coeffs[1, 0], rtol=0, atol=tol)