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Merge branch 'master' of github.com:SheffieldML/GPy
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commit
ac701df7e1
2 changed files with 61 additions and 3 deletions
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@ -46,7 +46,6 @@ def GPLVM_oil_100():
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# create simple GP model
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m = GPy.models.GPLVM(data['X'], 2)
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# optimize
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m.ensure_default_constraints()
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m.optimize()
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@ -10,6 +10,7 @@ from ..core import model
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from ..util.linalg import pdinv, PCA
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from GP import GP
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from ..likelihoods import Gaussian
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from .. import util
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class GPLVM(GP):
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"""
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@ -59,5 +60,63 @@ class GPLVM(GP):
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mu, var, upper, lower = self.predict(Xnew)
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pb.plot(mu[:,0], mu[:,1],'k',linewidth=1.5)
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def plot_latent(self):
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raise NotImplementedError
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def plot_latent(self,labels=None, which_indices=None, resolution=50):
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"""
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:param labels: a np.array of size self.N containing labels for the points (can be number, strings, etc)
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:param resolution: the resolution of the grid on which to evaluate the predictive variance
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"""
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if labels is None:
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labels = np.ones(self.N)
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if which_indices is None:
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if self.Q==1:
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input_1 = 0
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input_2 = None
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if self.Q==2:
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input_1, input_2 = 0,1
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else:
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#try to find a linear of RBF kern in the kernel
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k = [p for p in self.kern.parts if p.name in ['rbf','linear']]
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if (not len(k)==1) or (not k[0].ARD):
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raise ValueError, "cannot Atomatically determine which dimensions to plot, please pass 'which_indices'"
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k = k[0]
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if k.name=='rbf':
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input_1, input_2 = np.argsort(k.lengthscales)[:2]
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elif k.name=='linear':
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input_1, input_2 = np.argsort(k.variances)[::-1][:2]
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#first, plot the output variance as a function of the latent space
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Xtest, xx,yy,xmin,xmax = util.plot.x_frame2D(self.X[:,[input_1, input_2]],resolution=resolution)
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mu, var, low, up = self.predict(Xtest)
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pb.imshow(var.reshape(resolution,resolution).T[::-1,:],extent=[xmin[0],xmax[0],xmin[1],xmax[1]],cmap=pb.cm.binary,interpolation='bilinear')
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for i,ul in enumerate(np.unique(labels)):
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if type(ul) is np.string_:
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this_label = ul
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elif type(ul) is np.int64:
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this_label = 'class %i'%ul
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else:
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this_label = 'class %i'%i
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index = np.nonzero(labels==ul)[0]
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if self.Q==1:
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x = self.X[index,input_1]
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y = np.zeros(index.size)
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else:
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x = self.X[index,input_1]
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y = self.X[index,input_2]
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pb.plot(x,y,marker='o',color=util.plot.Tango.nextMedium(),mew=0,label=this_label,linewidth=0)
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pb.xlabel('latent dimension %i'%input_1)
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pb.ylabel('latent dimension %i'%input_2)
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if not np.all(labels==1.):
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pb.legend(loc=0,numpoints=1)
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pb.xlim(xmin[0],xmax[0])
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pb.ylim(xmin[1],xmax[1])
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