def test_hamiltonian_chain_burn_in():
    posterior = ToroidalGaussian()
    chain = HamiltonianChain(posterior=posterior, start=[1, 0.1, 0.1])
    steps = 10
    chain.advance(steps)
    burn = chain.estimate_burn_in()

    assert 0 < burn <= steps

    chain.autoselect_burn()
    assert chain.burn == burn
def test_hamiltonian_chain_restore(tmp_path):
    posterior = ToroidalGaussian()
    chain = HamiltonianChain(posterior=posterior,
                             grad=posterior.gradient,
                             start=[1, 0.1, 0.1])
    steps = 10
    chain.advance(steps)

    filename = tmp_path / "restore_file.npz"
    chain.save(filename)

    new_chain = HamiltonianChain.load(filename)

    assert new_chain.n == chain.n
    assert new_chain.probs == chain.probs
    assert all(new_chain.get_last() == chain.get_last())
def test_hamiltonian_chain_advance_no_gradient():
    posterior = ToroidalGaussian()
    chain = HamiltonianChain(posterior=posterior, start=[1, 0.1, 0.1])
    first_n = chain.n
    steps = 10
    chain.advance(steps)

    assert chain.n == first_n + steps
    chain.burn = 0
    assert len(chain.get_parameter(0)) == chain.n
    assert len(chain.get_parameter(1)) == chain.n
    assert len(chain.get_parameter(2)) == chain.n
    assert len(chain.probs) == chain.n
def test_hamiltonian_chain_take_step():
    posterior = ToroidalGaussian()
    chain = HamiltonianChain(posterior=posterior,
                             grad=posterior.gradient,
                             start=[1, 0.1, 0.1])
    first_n = chain.n

    chain.take_step()

    assert chain.n == first_n + 1
    chain.burn = 0
    assert len(chain.get_parameter(0)) == chain.n
    assert len(chain.get_parameter(1)) == chain.n
    assert len(chain.get_parameter(2)) == chain.n
    assert len(chain.probs) == chain.n
def test_hamiltonian_chain_advance_bounds(line_posterior):
    chain = HamiltonianChain(
        posterior=line_posterior,
        start=[0.5, 0.1],
        bounds=(array([0.45, 0.0]), array([0.55, 10.0])),
    )
    chain.advance(10)

    gradient = array(chain.get_parameter(0))
    assert all(gradient >= 0.45)
    assert all(gradient <= 0.55)

    offset = array(chain.get_parameter(1))
    assert all(offset >= 0)
        return -0.5 * r**2 / self.w2

    def gradient(self, theta):
        x, y, z = theta
        R = sqrt(x**2 + y**2)
        K = 1 - self.R0 / R
        g = array([K * x, K * y, z])
        return -g / self.w2


# create an instance of our posterior class
posterior = ToroidalGaussian()

# create the chain object
chain = HamiltonianChain(posterior=posterior,
                         grad=posterior.gradient,
                         start=[1, 0.1, 0.1])

# advance the chain to generate the sample
chain.advance(6000)

# choose how many samples will be thrown away from the start
# of the chain as 'burn-in'
chain.burn = 2000

chain.matrix_plot(filename='hmc_matrix_plot.png')

# extract sample and probability data from the chain
probs = chain.get_probabilities()
colors = exp(probs - max(probs))
xs, ys, zs = [chain.get_parameter(i) for i in [0, 1, 2]]
Example #7
0
        return -0.5 * r**2 / self.w2

    def gradient(self, theta):
        x, y, z = theta
        R = sqrt(x**2 + y**2)
        K = 1 - self.R0 / R
        g = array([K * x, K * y, z])
        return -g / self.w2


# create an instance of our posterior class
posterior = ToroidalGaussian()

# create the chain object
chain = HamiltonianChain(posterior=posterior,
                         grad=posterior.gradient,
                         start=[1, 0.1, 0.1])

# advance the chain to generate the sample
chain.advance(6000)

# choose how many samples will be thrown away from the start
# of the chain as 'burn-in'
chain.burn = 2000

# extract sample and probability data from the chain
probs = chain.get_probabilities()
colors = exp(probs - max(probs))
xs, ys, zs = [chain.get_parameter(i) for i in [0, 1, 2]]

# Plot the sample we've generated as a 3D scatterplot
        return -0.5 * r**2 / self.w2

    def gradient(self, theta):
        x, y, z = theta
        R = sqrt(x**2 + y**2)
        K = 1 - self.R0 / R
        g = array([K * x, K * y, z])
        return -g / self.w2


posterior = ToroidalGaussian()

from inference.mcmc import HamiltonianChain

hmc = HamiltonianChain(posterior=posterior,
                       grad=posterior.gradient,
                       start=[1, 0.1, 0.1])

hmc.advance(6000)
hmc.burn = 1000

from mpl_toolkits.mplot3d import Axes3D
fig = plt.figure(figsize=(5, 4))
ax = fig.add_subplot(111, projection='3d')
ax.set_xticks([-1, -0.5, 0., 0.5, 1.])
ax.set_yticks([-1, -0.5, 0., 0.5, 1.])
ax.set_zticks([-1, -0.5, 0., 0.5, 1.])
# ax.set_title('Hamiltonian Monte-Carlo')
L = 1.1
ax.set_xlim([-L, L])
ax.set_ylim([-L, L])