Exemple #1
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def test_weights_derivative():
    ly = layers.Weights((num_vis, num_hid))
    p = penalties.l2_penalty(0.37)
    ly.add_penalty({'matrix': p})
    vis = be.randn((num_samples, num_vis))
    hid = be.randn((num_samples, num_hid))
    derivs = ly.derivatives(vis, hid)
Exemple #2
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def test_exponential_conditional_params():
    ly = layers.ExponentialLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    scaled_units = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    beta = be.rand((num_samples, 1))
    ly._conditional_params(scaled_units, weights, beta)
Exemple #3
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def test_bernoulli_derivatives():
    ly = layers.BernoulliLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    vis = ly.random((num_samples, num_vis))
    hid = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    ly.derivatives(vis, hid, weights)
Exemple #4
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def test_onehot_derivatives():
    ly = layers.OneHotLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    vis = ly.random((num_samples, num_vis))
    hid = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    ly.derivatives(vis, hid, weights)
Exemple #5
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def test_gaussian_derivatives():
    ly = layers.GaussianLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    vis = ly.random((num_samples, num_vis))
    hid = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    ly.derivatives(vis, hid, weights)
Exemple #6
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def test_onehot_conditional_params():
    ly = layers.OneHotLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    scaled_units = [be.randn((num_samples, num_hid))]
    weights = [w.W(trans=True)]
    beta = be.rand((num_samples, 1))
    ly.conditional_params(scaled_units, weights, beta)
Exemple #7
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def test_exponential_update():
    ly = layers.BernoulliLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    scaled_units = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    beta = be.rand((num_samples, 1))
    ly.update(scaled_units, weights, beta)
Exemple #8
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def test_weights_build_from_config():
    ly = layers.Weights((num_vis, num_hid))
    ly.add_constraint({'matrix': constraints.non_negative})
    p = penalties.l2_penalty(0.37)
    ly.add_penalty({'matrix': p})
    ly_new = layers.Layer.from_config(ly.get_config())
    assert ly_new.get_config() == ly.get_config()
Exemple #9
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def test_ising_update():
    ly = layers.IsingLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    scaled_units = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    beta = be.rand((num_samples, 1))
    ly.update(scaled_units, weights, beta)
Exemple #10
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def test_ising_derivatives():
    ly = layers.IsingLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    vis = ly.random((num_samples, num_vis))
    hid = [be.randn((num_samples, num_hid))]
    weights = [w.W()]
    beta = be.rand((num_samples, 1))
    ly.derivatives(vis, hid, weights, beta)
Exemple #11
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def test_exponential_derivatives():
    ly = layers.ExponentialLayer(num_vis)
    w = layers.Weights((num_vis, num_hid))
    vis = ly.random((num_samples, num_vis))
    hid = [be.randn((num_samples, num_hid))]
    weights = [w.W_T()]
    beta = be.rand((num_samples, 1))
    ly.derivatives(vis, hid, weights, beta)
Exemple #12
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def test_Weights_creation():
    layers.Weights((num_vis, num_hid))
Exemple #13
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def test_weights_energy():
    ly = layers.Weights((num_vis, num_hid))
    vis = be.randn((num_samples, num_vis))
    hid = be.randn((num_samples, num_hid))
    ly.energy(vis, hid)
Exemple #14
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def test_enforce_constraints():
    ly = layers.Weights((num_vis, num_hid))
    ly.add_constraint({'matrix': constraints.non_negative})
    ly.enforce_constraints()
Exemple #15
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def test_get_base_config():
    ly = layers.Weights((num_vis, num_hid))
    ly.add_constraint({'matrix': constraints.non_negative})
    p = penalties.l2_penalty(0.37)
    ly.add_penalty({'matrix': p})
    ly.get_base_config()
Exemple #16
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def test_parameter_step():
    ly = layers.Weights((num_vis, num_hid))
    deltas = layers.ParamsWeights(be.randn(ly.shape))
    ly.parameter_step(deltas)
Exemple #17
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def test_get_penalty_grad():
    ly = layers.Weights((num_vis, num_hid))
    p = penalties.l2_penalty(0.37)
    ly.add_penalty({'matrix': p})
    ly.get_penalty_grad(ly.W(), 'matrix')
Exemple #18
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def test_add_penalty():
    ly = layers.Weights((num_vis, num_hid))
    p = penalties.l2_penalty(0.37)
    ly.add_penalty({'matrix': p})