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minor/pep8
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3051c2a7e5
3 changed files with 14 additions and 11 deletions
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@ -477,7 +477,7 @@ class Model(Parameterized):
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if not hasattr(self, 'kern'):
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if not hasattr(self, 'kern'):
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raise ValueError, "this Model has no kernel"
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raise ValueError, "this Model has no kernel"
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k = [p for p in self.kern.parts if p.name in ['rbf', 'linear','rbf_inv']]
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k = [p for p in self.kern.parts if p.name in ['rbf', 'linear', 'rbf_inv']]
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if (not len(k) == 1) or (not k[0].ARD):
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if (not len(k) == 1) or (not k[0].ARD):
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raise ValueError, "cannot determine sensitivity for this kernel"
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raise ValueError, "cannot determine sensitivity for this kernel"
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k = k[0]
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k = k[0]
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@ -12,19 +12,20 @@ from GPy.likelihoods.gaussian import Gaussian
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default_seed = np.random.seed(123344)
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default_seed = np.random.seed(123344)
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def BGPLVM(seed=default_seed):
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def BGPLVM(seed=default_seed):
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N = 10
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N = 5
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num_inducing = 3
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num_inducing = 4
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Q = 5
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Q = 3
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D = 10
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D = 2
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# generate GPLVM-like data
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# generate GPLVM-like data
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X = np.random.rand(N, Q)
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X = np.random.rand(N, Q)
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lengthscales = np.random.rand(Q)
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lengthscales = np.random.rand(Q)
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k = GPy.kern.rbf(Q, .5, lengthscales, ARD=True) + GPy.kern.white(Q, 0.01)
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k = (GPy.kern.rbf(Q, .5, lengthscales, ARD=True)
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+ GPy.kern.white(Q, 0.01))
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K = k.K(X)
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K = k.K(X)
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Y = np.random.multivariate_normal(np.zeros(N), K, Q).T
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Y = np.random.multivariate_normal(np.zeros(N), K, D).T
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lik = Gaussian(Y, normalize=True)
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lik = Gaussian(Y, normalize=True)
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k = GPy.kern.rbf(Q, ARD=True) + GPy.kern.bias(Q) + GPy.kern.white(Q)
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k = GPy.kern.rbf_inv(Q, .5, np.ones(Q) * 2., ARD=True) + GPy.kern.bias(Q) + GPy.kern.white(Q)
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# k = GPy.kern.rbf(Q) + GPy.kern.bias(Q) + GPy.kern.white(Q, 0.00001)
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# k = GPy.kern.rbf(Q) + GPy.kern.bias(Q) + GPy.kern.white(Q, 0.00001)
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# k = GPy.kern.rbf(Q, ARD = False) + GPy.kern.white(Q, 0.00001)
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# k = GPy.kern.rbf(Q, ARD = False) + GPy.kern.white(Q, 0.00001)
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@ -298,17 +299,19 @@ def mrd_simulation(optimize=True, plot=True, plot_sim=True, **kw):
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D1, D2, D3, N, num_inducing, Q = 150, 200, 400, 500, 3, 7
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D1, D2, D3, N, num_inducing, Q = 150, 200, 400, 500, 3, 7
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slist, Slist, Ylist = _simulate_sincos(D1, D2, D3, N, num_inducing, Q, plot_sim)
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slist, Slist, Ylist = _simulate_sincos(D1, D2, D3, N, num_inducing, Q, plot_sim)
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likelihood_list = [Gaussian(x, normalize=True) for x in Ylist]
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from GPy.models import mrd
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from GPy.models import mrd
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from GPy import kern
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from GPy import kern
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reload(mrd); reload(kern)
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reload(mrd); reload(kern)
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k = kern.linear(Q, ARD=True) + kern.bias(Q, np.exp(-2)) + kern.white(Q, np.exp(-2))
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k = kern.linear(Q, ARD=True) + kern.bias(Q, np.exp(-2)) + kern.white(Q, np.exp(-2))
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m = mrd.MRD(Ylist, input_dim=Q, num_inducing=num_inducing, kernels=k, initx="", initz='permute', **kw)
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m = mrd.MRD(likelihood_list, input_dim=Q, num_inducing=num_inducing, kernels=k, initx="", initz='permute', **kw)
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m.ensure_default_constraints()
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m.ensure_default_constraints()
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for i, Y in enumerate(Ylist):
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for i, bgplvm in enumerate(m.bgplvms):
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m['{}_noise'.format(i)] = Y.var() / 100.
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m['{}_noise'.format(i)] = bgplvm.likelihood.Y.var() / 500.
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# DEBUG
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# DEBUG
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