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[SSGPLVM] new plot variational posterior
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3 changed files with 71 additions and 1 deletions
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@ -117,4 +117,4 @@ class SpikeAndSlabPosterior(VariationalPosterior):
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import sys
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assert "matplotlib" in sys.modules, "matplotlib package has not been imported."
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from ...plotting.matplot_dep import variational_plots
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return variational_plots.plot(self,*args)
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return variational_plots.plot_SpikeSlab(self,*args)
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@ -515,3 +515,28 @@ def cmu_mocap(subject='35', motion=['01'], in_place=True, optimize=True, verbose
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lvm_visualizer.close()
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return m
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def ssgplvm_simulation_linear():
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import numpy as np
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import GPy
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N, D, Q = 1000, 20, 5
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pi = 0.2
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def sample_X(Q, pi):
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x = np.empty(Q)
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dies = np.random.rand(Q)
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for q in xrange(Q):
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if dies[q]<pi:
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x[q] = np.random.randn()
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else:
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x[q] = 0.
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return x
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Y = np.empty((N,D))
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X = np.empty((N,Q))
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# Generate data from random sampled weight matrices
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for n in xrange(N):
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X[n] = sample_X(Q,pi)
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w = np.random.randn(D,Q)
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Y[n] = np.dot(w,X[n])
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@ -44,3 +44,48 @@ def plot(parameterized, fignum=None, ax=None, colors=None):
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pb.draw()
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fig.tight_layout(h_pad=.01) # , rect=(0, 0, 1, .95))
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return fig
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def plot_SpikeSlab(parameterized, fignum=None, ax=None, colors=None):
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"""
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Plot latent space X in 1D:
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- if fig is given, create input_dim subplots in fig and plot in these
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- if ax is given plot input_dim 1D latent space plots of X into each `axis`
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- if neither fig nor ax is given create a figure with fignum and plot in there
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colors:
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colors of different latent space dimensions input_dim
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"""
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if ax is None:
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fig = pb.figure(num=fignum, figsize=(8, min(12, (2 * parameterized.mean.shape[1]))))
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if colors is None:
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colors = pb.gca()._get_lines.color_cycle
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pb.clf()
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else:
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colors = iter(colors)
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plots = []
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means, variances, gamma = param_to_array(parameterized.mean, parameterized.variance, parameterized.binary_prob)
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x = np.arange(means.shape[0])
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for i in range(means.shape[1]):
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# mean and variance plot
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a = fig.add_subplot(means.shape[1]*2, 1, 2*i + 1)
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a.plot(means, c='k', alpha=.3)
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plots.extend(a.plot(x, means.T[i], c=colors.next(), label=r"$\mathbf{{X_{{{}}}}}$".format(i)))
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a.fill_between(x,
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means.T[i] - 2 * np.sqrt(variances.T[i]),
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means.T[i] + 2 * np.sqrt(variances.T[i]),
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facecolor=plots[-1].get_color(),
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alpha=.3)
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a.legend(borderaxespad=0.)
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a.set_xlim(x.min(), x.max())
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if i < means.shape[1] - 1:
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a.set_xticklabels('')
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# binary prob plot
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a = fig.add_subplot(means.shape[1]*2, 1, 2*i + 2)
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a.bar(x,gamma[:,i],bottom=0.,linewidth=0,align='center')
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a.set_xlim(x.min(), x.max())
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a.set_ylim([0.,1.])
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pb.draw()
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fig.tight_layout(h_pad=.01) # , rect=(0, 0, 1, .95))
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return fig
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