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some minor improvements in visualize
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parent
87304a0778
commit
48b0ac6399
4 changed files with 19 additions and 16 deletions
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@ -60,7 +60,7 @@ def GPLVM_oil_100(optimize=True,M=15):
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m.plot_latent(labels=m.data_labels)
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return m
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def BGPLVM_oil(optimize=True,N=100,Q=10,M=15):
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def BGPLVM_oil(optimize=True,N=100,Q=10,M=15,max_f_eval=300):
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data = GPy.util.datasets.oil()
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# create simple GP model
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@ -72,10 +72,10 @@ def BGPLVM_oil(optimize=True,N=100,Q=10,M=15):
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if optimize:
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m.constrain_fixed('noise',0.05)
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m.ensure_default_constraints()
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m.optimize('scg',messages=1)
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m.optimize('scg',messages=1,max_f_eval=max(80,max_f_eval))
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m.unconstrain('noise')
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m.constrain_positive('noise')
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m.optimize('scg',messages=1)
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m.optimize('scg',messages=1,max_f_eval=max(0,max_f_eval-80))
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else:
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m.ensure_default_constraints()
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@ -173,7 +173,7 @@ class rbf(kernpart):
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"""Think N,M,M,Q """
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self._psi_computations(Z,mu,S)
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tmp = self._psi2[:,:,:,None]/self.lengthscale2/self._psi2_denom
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target_mu += (dL_dpsi2[:,:,:,None]*-tmp*2.*self._psi2_mudist).sum(1).sum(1)
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target_mu += -2.*(dL_dpsi2[:,:,:,None]*tmp*self._psi2_mudist).sum(1).sum(1)
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target_S += (dL_dpsi2[:,:,:,None]*tmp*(2.*self._psi2_mudist_sq-1)).sum(1).sum(1)
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@ -207,7 +207,6 @@ class rbf(kernpart):
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if not (np.all(Z==self._Z) and np.all(mu==self._mu) and np.all(S==self._S)):
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#something's changed. recompute EVERYTHING
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#TODO: make more efficient for large Q (using NDL's dot product trick)
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#psi1
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self._psi1_denom = S[:,None,:]/self.lengthscale2 + 1.
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self._psi1_dist = Z[None,:,:]-mu[:,None,:]
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@ -95,3 +95,4 @@ class Bayesian_GPLVM(sparse_GP, GPLVM):
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input_1, input_2 = which_indices
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ax = GPLVM.plot_latent(self, which_indices=[input_1, input_2],*args, **kwargs)
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ax.plot(self.Z[:, input_1], self.Z[:, input_2], '^w')
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return ax
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@ -4,7 +4,7 @@ import GPy
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import numpy as np
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class lvm:
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def __init__(self, model, data_visualize, latent_axis):
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def __init__(self, model, data_visualize, latent_axis, latent_index=[0,1], latent_dim=2):
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self.cid = latent_axis.figure.canvas.mpl_connect('button_press_event', self.on_click)
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self.cid = latent_axis.figure.canvas.mpl_connect('motion_notify_event', self.on_move)
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self.data_visualize = data_visualize
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@ -12,6 +12,8 @@ class lvm:
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self.latent_axis = latent_axis
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self.called = False
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self.move_on = False
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self.latent_index = latent_index
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self.latent_dim = latent_dim
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def on_click(self, event):
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#print 'click', event.xdata, event.ydata
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@ -32,7 +34,8 @@ class lvm:
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if self.called and self.move_on:
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# Call modify code on move
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#print 'move', event.xdata, event.ydata
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latent_values = np.array((event.xdata, event.ydata))
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latent_values = np.zeros((1,self.latent_dim))
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latent_values[0,self.latent_index] = np.array([event.xdata, event.ydata])
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y = self.model.predict(latent_values)[0]
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self.data_visualize.modify(y)
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#print 'y', y
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@ -57,7 +60,7 @@ class vector_show(data_show):
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def __init__(self, vals, axis=None):
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data_show.__init__(self, vals, axis)
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self.vals = vals.T
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self.handle = plt.plot(np.arange(0, len(vals))[:, None], self.vals)[0]
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self.handle = self.axis.plot(np.arange(0, len(vals))[:, None], self.vals)[0]
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def modify(self, vals):
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xdata, ydata = self.handle.get_data()
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