Exemplo n.º 1
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 def test_set_threshold(self):
     theta_init = self.random_theta(5, 1)
     mcmc = KurslMCMC(theta_init)
     self.assertEqual(mcmc.THRESHOLD, 0.05)
     self.assertEqual(mcmc.model.THRESHOLD, 0.05)
     mcmc.set_threshold(0.1)
     self.assertEqual(mcmc.THRESHOLD, 0.1)
     self.assertEqual(mcmc.model.THRESHOLD, 0.1)
Exemplo n.º 2
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    def test_get_theta_without_running_sampler(self):
        theta_init = self.random_theta(3, 2)
        mcmc = KurslMCMC(theta_init)

        # After simulation is finished check for correctness
        with self.assertRaises(AttributeError) as error:
            mcmc.get_theta()
        self.assertTrue("theta" in str(error.exception))
        self.assertTrue("run()" in str(error.exception))
Exemplo n.º 3
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    def test_run_default(self):
        _cos = lambda l: l[2] * np.cos(l[0] * t + l[1])
        theta = [
            [15, 0, 1, 0],
            [35, 2, 3, 0],
        ]
        theta_std = [
            [1.0, 0.1, 0.8, 0.01],
            [1.5, 0.1, 1.5, 0.01],
        ]
        theta, theta_std = np.array(theta), np.array(theta_std)
        t = np.linspace(0, 1, 100)
        c1 = _cos(theta[0])
        c2 = _cos(theta[1])
        S = c1 + c2

        theta_init = np.array(theta, dtype=np.float64)
        theta_init[:, 0] += 2 - np.random.random(2) * 0.5
        theta_init[:, 2] += 1 - np.random.random(2) * 0.5
        mcmc = KurslMCMC(theta_init, theta_std, nwalkers=40, niter=200)
        mcmc.set_threshold(0.001)
        mcmc.set_sampler(t, S)
        mcmc.run()

        # After simulation is finished check for correctness
        theta_computed = mcmc.get_theta()
        self.assertTrue(
            np.allclose(theta, theta_computed, atol=0.5),
            "Expected:\n{}\nReceived:\n{}".format(theta, theta_computed))
Exemplo n.º 4
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 def test_theta_computed_boolean(self):
     theta_init = self.random_theta(2, 1)
     mcmc = KurslMCMC(theta_init, niter=2)
     self.assertFalse(mcmc._theta_computed(), "Without run should fail")
     mcmc.set_sampler(np.linspace(0, 1, 100), np.random.random(100))
     mcmc.run()
     self.assertTrue(mcmc._theta_computed(), "After run should return true")
Exemplo n.º 5
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    def test_mcmc_default(self):
        oscN, nH = 3, 2
        paramN = 3 + nH * (oscN - 1)
        theta_init = self.random_theta(oscN, nH)
        mcmc = KurslMCMC(theta_init)

        self.assertTrue(np.all(mcmc.theta_init == theta_init))
        self.assertEqual(mcmc.oscN, oscN)
        self.assertEqual(mcmc.paramN, paramN)
        self.assertEqual(mcmc.nH, nH)

        self.assertEqual(mcmc.ndim, theta_init.size)
        self.assertEqual(mcmc.nwalkers, 2 * theta_init.size)
        self.assertEqual(mcmc.niter, 100)

        self.assertTrue(mcmc.init_pos.shape,
                        (2 * theta_init.size, theta_init.size))

        self.assertEqual(mcmc.threads, 1)
        self.assertEqual(mcmc.save_iter, 10)
        self.assertEqual(mcmc.THRESHOLD, 0.05)
        self.assertEqual(mcmc.SAVE_INIT_POS, True)

        self.assertTrue(
            isinstance(mcmc.model, ModelWrapper),
            "Default model should be a wrapper ({}), but received "
            "{} type".format(ModelWrapper.__name__, type(mcmc.model)))
        self.assertTrue(
            isinstance(mcmc.model.model, KurSL),
            "Default model within wrapper should be KurSL ({}), but received "
            "{} type".format(KurSL.__name__, type(mcmc.model.model)))
Exemplo n.º 6
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 def test_lnlikelihood(self):
     t = np.arange(0, 1, 0.01)
     S = np.random.random(t.size)
     theta = self.random_theta(3, 2)
     kursl = KurSL(theta)
     model = ModelWrapper(kursl)
     lnlikelihood = KurslMCMC.lnlikelihood(theta, t, S[:-1], model)
     self.assertTrue(lnlikelihood < 0, "Any negative value is good")
Exemplo n.º 7
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    def test_set_model(self):
        """Assign newly defined model to use in MCMC.
        Model has to have `oscN` and `nH` properties."""
        class NewModel:
            def __init__(self):
                self.oscN = 2  # Number of oscillators
                self.nH = 2  # Number of coupling harmonics

        theta_init = np.random.random((3, 10))
        mcmc = KurslMCMC(theta_init)
        self.assertTrue(isinstance(mcmc.model, ModelWrapper))
        self.assertTrue(isinstance(mcmc.model.model, KurSL))

        new_model = NewModel()
        mcmc.set_model(new_model)
        self.assertTrue(isinstance(mcmc.model.model, NewModel))
        self.assertEqual(mcmc.model.THRESHOLD, 0.05)
Exemplo n.º 8
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    def test_run_start_from_solution(self):
        _cos = lambda l: l[2] * np.cos(l[0] * t + l[1])
        theta = np.array([
            [15, 0, 1, 0],
            [35, 2, 3, 0],
        ], dtype=np.float64)
        t = np.linspace(0, 1, 100)
        c1 = _cos(theta[0])
        c2 = _cos(theta[1])
        S = c1 + c2

        # Initial guess is far off. Just for an example.
        theta_init = np.array(theta, dtype=np.float64)
        theta_init += np.random.random(theta_init.shape) * 3
        mcmc = KurslMCMC(theta_init)
        mcmc.set_sampler(t, S)

        # However, execution starts close to solution.
        pos = np.tile(theta.flatten(), (mcmc.nwalkers, 1))
        pos += np.random.random(pos.shape) * 0.3
        mcmc.run(pos=pos)
        niter_executed = mcmc.get_lnprob().shape[0]
        self.assertTrue(
            niter_executed < mcmc.niter,
            "Starting close solution should allow for quick convergence "
            "and not all iterations would be executed.")
Exemplo n.º 9
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    def test_set_sampler(self):
        t = np.linspace(0, 1, 100)
        S = np.random.random(t.size)
        s = S[:-1]
        s_var = np.sum((s - s.mean()) * (s - s.mean()))
        theta_init = self.random_theta(3, 2)

        mcmc = KurslMCMC(theta_init)
        self.assertEqual(mcmc.model.s_var, 1, "Default var is 1")
        self.assertTrue(
            mcmc.sampler is None,
            "Without explicit assignment there should be no sampler.")

        mcmc.set_sampler(t, S)
        self.assertEqual(
            type(mcmc.sampler).__name__, "EnsembleSampler",
            "Executing `set_sampler` should create EnsembleSampler `sampler`")
        self.assertEqual(mcmc.model.s_var, s_var, "Updated var for the model")
Exemplo n.º 10
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 def test_lnprob(self):
     t = np.arange(0, 1, 0.01)
     S = np.random.random(t.size)
     theta = self.random_theta(4, 3)
     kursl = KurSL(theta)
     model = ModelWrapper(kursl)
     self.assertTrue(
         KurslMCMC.lnprob(theta, t, S[:-1], model) < 0,
         "Any good theta should return negative value")
Exemplo n.º 11
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    def test_lnprob_theta_outside_range(self):
        t = np.arange(0, 1, 0.01)
        S = np.random.random(t.size)
        theta = self.random_theta(4, 3)
        kursl = KurSL(theta)
        model = ModelWrapper(kursl)

        theta[0, 0] = model.MIN_W - 1
        self.assertEqual(KurslMCMC.lnprob(theta, t, S[:-1], model), -np.inf,
                         "Inherit behaviour of lnprob and lnlikelihood")
Exemplo n.º 12
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    def test_lnprior(self):
        t = np.arange(0, 1, 0.01)
        theta = self.random_theta(3, 2)
        kursl = KurSL(theta)
        model = ModelWrapper(kursl)
        lnprob = KurslMCMC.lnprior(theta, model)

        # Given default uniform probablities it's either 0 or -np.inf
        self.assertEqual(np.round(lnprob, 10), 0,
                         "Theta within max ranges results in 0")
Exemplo n.º 13
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 def test_lnlikelihood_zero(self):
     t = np.arange(0, 1, 0.01)
     S = 2 * np.cos(10 * t + 0) + 6 * np.cos(20 * t + 4)
     theta = np.array([
         [10, 0, 2, 0],
         [20, 4, 6, 0],
     ])
     kursl = KurSL(theta)
     model = ModelWrapper(kursl)
     lnlikelihood = KurslMCMC.lnlikelihood(theta, t, S[:-1], model)
     self.assertEqual(np.round(lnlikelihood, 10), 0,
                      "Exact reconstruction should return 0")
     self.assertTrue(model.THRESHOLD_OBTAINED, "0 is below any threshold")
Exemplo n.º 14
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    def test_init_walkers(self):
        theta_init = np.array([
            [115, 0, 3, 0, 1, 2, 0, -1, -3],
            [120, 1, 2, -1, 0, 1, 2, -3, 2],
            [135, 2, 9, -2, -2, -2, 0, -2, 0],
        ],
                              dtype=np.float64)
        oscN, paramN = theta_init.shape
        nH = int((paramN - 3) / (oscN - 1))
        self.assertEqual(nH, 3)
        theta_std = np.random.random((oscN, paramN))

        mcmc = KurslMCMC(theta_init)
        mcmc._init_walkers(theta_init, theta_std)
        nwalkers = mcmc.nwalkers

        self.assertEqual(mcmc.init_pos.shape, (nwalkers, oscN * paramN))
        self.assertTrue(
            np.all(mcmc.init_pos[0] == theta_init.flatten()),
            "First walker should have the same values as passed. "
            "First walkers:\n{}\nPassed:\n{}".format(mcmc.init_pos[0],
                                                     theta_init))
Exemplo n.º 15
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 def test_run_with_incorrect_pos(self):
     t = np.linspace(0, 1, 100)
     S = np.random.random(t.size)
     mcmc = KurslMCMC(self.random_theta(3, 2))
     mcmc.set_sampler(t, S)
     with self.assertRaises(ValueError) as error:
         mcmc.run(pos=self.random_theta(3, 2))
     self.assertTrue("pos.shape" in str(error.exception))
Exemplo n.º 16
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    def test_lnprior_theta_outside_ranges(self):
        t = np.arange(0, 1, 0.01)
        S = np.random.random(t.size)
        theta = self.random_theta(3, 2)
        kursl = KurSL(theta)
        model = ModelWrapper(kursl)

        new_theta = theta.copy()
        new_theta[0, 2] = model.MIN_R - 1
        self.assertEqual(KurslMCMC.lnprior(new_theta, model), -np.inf)
        new_theta[0, 2] = model.MAX_R + 1
        self.assertEqual(KurslMCMC.lnprior(new_theta, model), -np.inf)

        new_theta = theta.copy()
        new_theta[1, 0] = model.MIN_W - 1
        self.assertEqual(KurslMCMC.lnprior(new_theta, model), -np.inf)
        new_theta[1, 0] = model.MAX_W + 1
        self.assertEqual(KurslMCMC.lnprior(new_theta, model), -np.inf)

        # Check for W_i < sum_j (|k_ij|)
        new_theta = theta.copy()
        new_theta[2, 0] = np.sum(new_theta[2, 3:]) * 0.6
        self.assertEqual(KurslMCMC.lnprior(new_theta, model), -np.inf)
Exemplo n.º 17
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 def test_run_without_model(self):
     mcmc = KurslMCMC(self.random_theta(3, 2))
     mcmc.model = None  # This situation shouldn't even be possible
     with self.assertRaises(AttributeError) as error:
         mcmc.run()
     self.assertEqual("Model not selected", str(error.exception))
Exemplo n.º 18
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 def test_run_without_sampler(self):
     mcmc = KurslMCMC(self.random_theta(3, 2))
     with self.assertRaises(AttributeError) as error:
         mcmc.run()
     self.assertTrue("Sampler not defined" in str(error.exception))
     self.assertTrue("set_sampler" in str(error.exception))
Exemplo n.º 19
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 def test_neg_log(self):
     x = np.array([0.999, 2.011, 10, np.exp(0)])
     y_exp = -3
     y_out = KurslMCMC.neg_log(x)
     self.assertTrue(abs(y_out - y_exp) < 1e-3)