示例#1
0
def batch_test_ss_mlp_gentle(test_count=10, su_count=1000):
    """Run multiple semisupervised learning tests."""
    # Set some reasonable sgd parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.1
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 3.5
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['mlp_type'] = 'dev'
    # Set some reasonable mlp parameters
    mlp_params = {}
    mlp_params['layer_sizes'] = [28 * 28, 500, 500, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 5]
    mlp_params['dev_lams'] = [0.1, 0.1, 0.2]
    mlp_params['dev_mix_rate'] = 0.
    mlp_params['lam_l2a'] = 1e-2
    mlp_params['use_bias'] = 1

    # Goofy symbolic sacrament to Theano
    x_in = T.matrix('x_in')

    # Run tests with different sorts of regularization
    for test_num in range(test_count):
        rng_seed = test_num
        # Initialize a random number generator for this test
        rng = np.random.RandomState(rng_seed)
        # Construct the SS_DEV_NET object that we will be training
        mlp_params['dev_types'] = [1, 1, 5]
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)
        # Run test with DEV regularization on unsupervised examples
        sgd_params['result_tag'] = "ss_dev_500x500_s{0:d}_{1:d}".format(
            su_count, test_num)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['start_rate'] = 0.02
        # Train with weak DEV regularization
        sgd_params['epochs'] = 5
        NET.set_dev_lams([0.01, 0.01, 0.0])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with more DEV regularization
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.02, 0.02, 0.02])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with more DEV regularization
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.05, 0.05, 0.08])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with most DEV regularization
        sgd_params['epochs'] = 100
        NET.set_dev_lams([0.1, 0.1, 0.2])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
    return 1
示例#2
0
def batch_test_ss_mlp_gentle(test_count=10, su_count=1000):
    """Run multiple semisupervised learning tests."""
    # Set some reasonable sgd parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.1
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 3.5
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['mlp_type'] = 'dev'
    # Set some reasonable mlp parameters
    mlp_params = {}
    mlp_params['layer_sizes'] = [28*28, 500, 500, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 5]
    mlp_params['dev_lams'] = [0.1, 0.1, 0.2]
    mlp_params['dev_mix_rate'] = 0.
    mlp_params['lam_l2a'] = 1e-2
    mlp_params['use_bias'] = 1

    # Goofy symbolic sacrament to Theano
    x_in = T.matrix('x_in')

    # Run tests with different sorts of regularization
    for test_num in range(test_count):
        rng_seed = test_num
        # Initialize a random number generator for this test
        rng = np.random.RandomState(rng_seed)
        # Construct the SS_DEV_NET object that we will be training
        mlp_params['dev_types'] = [1, 1, 5]
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)
        # Run test with DEV regularization on unsupervised examples
        sgd_params['result_tag'] = "ss_dev_500x500_s{0:d}_{1:d}".format(su_count,test_num)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['start_rate'] = 0.02
        # Train with weak DEV regularization
        sgd_params['epochs'] = 5
        NET.set_dev_lams([0.01, 0.01, 0.0])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with more DEV regularization
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.02, 0.02, 0.02])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with more DEV regularization
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.05, 0.05, 0.08])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with most DEV regularization
        sgd_params['epochs'] = 100
        NET.set_dev_lams([0.1, 0.1, 0.2])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
    return 1
示例#3
0
def batch_test_ss_mlp(test_count=10, su_count=1000):
    """Run multiple semisupervised learning tests."""
    # Set some reasonable sgd parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.1
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 3.5
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['mlp_type'] = 'dev'
    # Set some reasonable mlp parameters
    mlp_params = {}
    mlp_params['layer_sizes'] = [28 * 28, 500, 500, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 2]
    mlp_params['dev_lams'] = [0.1, 0.1, 2.0]
    mlp_params['dev_mix_rate'] = 0.
    mlp_params['lam_l2a'] = 1e-3
    mlp_params['use_bias'] = 1

    # Goofy symbolic sacrament to Theano
    x_in = T.matrix('x_in')

    # Run tests with different sorts of regularization
    for test_num in range(test_count):
        """
        # Run test with no droppish regularization
        sgd_params['result_tag'] = "ss_raw_500x500_{0:d}_s{1:d}".format(test_num,su_count)
        sgd_params['mlp_type'] = 'raw'
        mlp_params['dev_lams'] = [0., 0., 0.]
        # Initialize a random number generator for this test
        rng = np.random.RandomState(test_num)
        # Construct the SS_DEV_NET object that we will be training
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)
        rng = np.random.RandomState(test_num)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Run test with standard dropout on supervised examples
        sgd_params['result_tag'] = "ss_sde_500x500_{0:d}".format(test_num)
        sgd_params['mlp_type'] = 'sde'
        # Initialize a random number generator for this test
        rng = np.random.RandomState(test_num)
        # Construct the SS_DEV_NET object that we will be training
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)
        rng = np.random.RandomState(test_num)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        """
        # Run test with DEV regularization on unsupervised examples
        sgd_params['result_tag'] = "ss_dev_500x500_{0:d}".format(test_num)
        sgd_params['mlp_type'] = 'dev'
        #mlp_params['dev_types'] = [1, 1, 2]
        #mlp_params['dev_lams'] = [0.1, 0.1, 2.0]
        mlp_params['dev_types'] = [1, 1, 6]
        mlp_params['dev_lams'] = [0.1, 0.1, 1.0]
        # Initialize a random number generator for this test
        rng = np.random.RandomState(test_num)
        # Construct the SS_DEV_NET object that we will be training
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)
        rng = np.random.RandomState(test_num)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
    return 1
示例#4
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def test_dropout_ala_original():
    """Run standard dropout training on MNIST with parameters to reproduce
    the results from original papers by Hinton et. al."""

    # Set suitable optimization parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.1
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 3.5
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['result_tag'] = 'dropout'
    sgd_params['mlp_type'] = 'dev'  # Use standard dropout

    # Set parameters for the network to be trained
    mlp_params = {}
    mlp_params['layer_sizes'] = [28 * 28, 800, 800, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 2]
    mlp_params['dev_lams'] = [0.1, 0.1, 2.0]
    mlp_params['dev_mix_rate'] = 1.0
    mlp_params['lam_l2a'] = 1e-3
    mlp_params['use_bias'] = 1

    # Initialize a random number generator for this test
    rng = np.random.RandomState(12345)

    # Construct the SS_DEV_NET object that we will be training
    x_in = T.matrix('x_in')
    NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)

    # Initialize biases in each net layer (except final layer) to small
    # positive constants (rather than their default zero initialization)
    for (num, layer) in enumerate(NET.mlp_layers):
        b_init = layer.b.get_value(borrow=False)
        b_const = np.zeros(b_init.shape, dtype=theano.config.floatX)
        if (num < (len(NET.mlp_layers) - 1)):
            b_const = b_const + 0.01
        layer.b.set_value(b_const)

    # Run training on the given MLP
    train_mlp(NET, mlp_params, sgd_params)
    return 1
示例#5
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def test_dae(dae_layer=0, mlp_params=False, sgd_params=False):
    """Setup basic test for semisupervised DEV-regularized MLP."""

    if not sgd_params:
        # Set some reasonable sgd parameters
        sgd_params = {}
        sgd_params['start_rate'] = 0.05
        sgd_params['decay_rate'] = 0.998
        sgd_params['wt_norm_bound'] = 5.0
        sgd_params['epochs'] = 50
        sgd_params['batch_size'] = 25
        sgd_params['mlp_type'] = 'raw'
        sgd_params['result_tag'] = 'xxx'
    if not mlp_params:
        # Set some reasonable mlp parameters
        mlp_params = {}
        mlp_params['layer_sizes'] = [28 * 28, 500, 11]
        mlp_params['dev_clones'] = 1
        mlp_params['dev_types'] = [1, 2]
        mlp_params['dev_lams'] = [0.1, 2.0]
        mlp_params['dev_mix_rate'] = 0.0
        mlp_params['lam_l2a'] = 1e-3
        mlp_params['use_bias'] = 1

    # Initialize a random number generator for this test
    rng = np.random.RandomState(12345)

    # Construct the SS_DEV_NET object that we will be training
    x_in = T.matrix('x_in')
    NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)

    # Initialize biases in each net layer (except final layer) to zero
    for layer in NET.mlp_layers:
        b_init = layer.b.get_value(borrow=False)
        b_const = np.zeros(b_init.shape, dtype=theano.config.floatX) + 0.0
        layer.b.set_value(b_const)

    # Run semisupervised training on the given MLP
    train_dae(NET, dae_layer, mlp_params, sgd_params)
    return 1
示例#6
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def batch_test_ss_mlp_pt(test_count=10, su_count=1000):
    """Setup basic test for semisupervised DEV-regularized MLP."""

    # Set some reasonable sgd parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.01
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 3.5
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['mlp_type'] = 'dev'
    sgd_params['result_tag'] = 'xxx'
    # Set some reasonable mlp parameters
    mlp_params = {}
    mlp_params['layer_sizes'] = [28 * 28, 500, 500, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 5]
    mlp_params['dev_lams'] = [0.1, 0.1, 0.1]
    mlp_params['dev_mix_rate'] = 0.0
    mlp_params['lam_l2a'] = 1e-3
    mlp_params['use_bias'] = 1

    for test_num in range(test_count):
        rng_seed = test_num
        sgd_params['result_tag'] = "test_{0:d}".format(test_num)

        # Initialize a random number generator for this test
        rng = np.random.RandomState(rng_seed)

        # Construct the SS_DEV_NET object that we will be training
        x_in = T.matrix('x_in')
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)

        # Initialize biases in each net layer (except final layer) to small
        # positive constants (rather than their default zero initialization)
        for (num, layer) in enumerate(NET.mlp_layers):
            b_init = layer.b.get_value(borrow=False)
            b_const = np.zeros(b_init.shape, dtype=theano.config.floatX)
            if (num < (len(NET.mlp_layers) - 1)):
                b_const = b_const + 0.0
            layer.b.set_value(b_const)

        ##########################################
        # First, pretrain each layer in the mlp. #
        ##########################################
        sgd_params['mlp_type'] = 'raw'
        sgd_params['batch_size'] = 25
        sgd_params['start_rate'] = 0.01
        sgd_params['epochs'] = 40
        for i in range(len(NET.mlp_layers) - 1):
            print("==================================================")
            print("Pretraining hidden layer {0:d}".format(i + 1))
            print("==================================================")
            train_dae(NET, i, mlp_params, sgd_params)

        # Run semisupervised training on the given MLP
        sgd_params['top_only'] = True
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.005, 0.005, 0.005])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['top_only'] = False
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.02, 0.02, 0.02])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.05, 0.05, 0.05])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.1, 0.1, 0.1])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['result_tag'] = "pt_dev_500x500_s{0:d}_{1:d}".format(
            su_count, test_num)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 500
        NET.set_dev_lams([0.1, 0.1, 0.2])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
    return 1
示例#7
0
def batch_test_ss_mlp_pt(test_count=10, su_count=1000):
    """Setup basic test for semisupervised DEV-regularized MLP."""

    # Set some reasonable sgd parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.01
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 2.0
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['bias_noise'] = 0.2
    sgd_params['mlp_type'] = 'dev'
    sgd_params['result_tag'] = 'xxx'
    # Set some reasonable mlp parameters
    mlp_params = {}
    mlp_params['layer_sizes'] = [28*28, 500, 500, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 5]
    mlp_params['dev_lams'] = [0.1, 0.1, 0.2]
    mlp_params['dev_mix_rate'] = 0.5
    mlp_params['lam_l2a'] = 1e-3
    mlp_params['use_bias'] = 1

    for test_num in range(test_count):
        rng_seed = test_num
        sgd_params['result_tag'] = "test_{0:d}".format(test_num)

        # Initialize a random number generator for this test
        rng = np.random.RandomState(rng_seed)

        # Construct the SS_DEV_NET object that we will be training
        x_in = T.matrix('x_in')
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)
        init_biases(NET, b_init=0.0)

        ##########################################
        # First, pretrain each layer in the mlp. #
        ##########################################
        sgd_params['result_tag'] = "ss_dev_pt_s{0:d}_{1:d}".format(su_count,test_num)
        sgd_params['mlp_type'] = 'raw'
        sgd_params['batch_size'] = 25
        sgd_params['start_rate'] = 0.01
        sgd_params['epochs'] = 40
        for i in range(len(NET.mlp_layers)-1):
            print("==================================================")
            print("Pretraining hidden layer {0:d}".format(i+1))
            print("==================================================")
            train_dae(NET, i, mlp_params, sgd_params)

        # Run semisupervised training on the given MLP
        sgd_params['batch_size'] = 100
        sgd_params['mlp_type'] = 'dev'
        sgd_params['start_rate'] = 0.02
        # Train with weak DEV regularization
        sgd_params['top_only'] = True
        sgd_params['epochs'] = 5
        NET.set_dev_lams([0.01, 0.01, 0.01])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with more DEV regularization
        sgd_params['top_only'] = False
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.02, 0.02, 0.02])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with more DEV regularization
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.05, 0.05, 0.08])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        # Train with most DEV regularization
        sgd_params['epochs'] = 500
        NET.set_dev_lams([0.1, 0.1, 0.2])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
    return
示例#8
0
def batch_test_ss_mlp_pt(test_count=10, su_count=1000):
    """Setup basic test for semisupervised DEV-regularized MLP."""

    # Set some reasonable sgd parameters
    sgd_params = {}
    sgd_params['start_rate'] = 0.01
    sgd_params['decay_rate'] = 0.998
    sgd_params['wt_norm_bound'] = 3.5
    sgd_params['epochs'] = 1000
    sgd_params['batch_size'] = 100
    sgd_params['mlp_type'] = 'dev'
    sgd_params['result_tag'] = 'xxx'
    # Set some reasonable mlp parameters
    mlp_params = {}
    mlp_params['layer_sizes'] = [28*28, 500, 500, 11]
    mlp_params['dev_clones'] = 1
    mlp_params['dev_types'] = [1, 1, 5]
    mlp_params['dev_lams'] = [0.1, 0.1, 0.1]
    mlp_params['dev_mix_rate'] = 0.0
    mlp_params['lam_l2a'] = 1e-3
    mlp_params['use_bias'] = 1

    for test_num in range(test_count):
        rng_seed = test_num
        sgd_params['result_tag'] = "test_{0:d}".format(test_num)

        # Initialize a random number generator for this test
        rng = np.random.RandomState(rng_seed)

        # Construct the SS_DEV_NET object that we will be training
        x_in = T.matrix('x_in')
        NET = SS_DEV_NET(rng=rng, input=x_in, params=mlp_params)

        # Initialize biases in each net layer (except final layer) to small
        # positive constants (rather than their default zero initialization)
        for (num, layer) in enumerate(NET.mlp_layers):
            b_init = layer.b.get_value(borrow=False)
            b_const = np.zeros(b_init.shape, dtype=theano.config.floatX)
            if (num < (len(NET.mlp_layers)-1)):
                b_const = b_const + 0.0
            layer.b.set_value(b_const)

        ##########################################
        # First, pretrain each layer in the mlp. #
        ##########################################
        sgd_params['mlp_type'] = 'raw'
        sgd_params['batch_size'] = 25
        sgd_params['start_rate'] = 0.01
        sgd_params['epochs'] = 40
        for i in range(len(NET.mlp_layers)-1):
            print("==================================================")
            print("Pretraining hidden layer {0:d}".format(i+1))
            print("==================================================")
            train_dae(NET, i, mlp_params, sgd_params)

        # Run semisupervised training on the given MLP
        sgd_params['top_only'] = True
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.005, 0.005, 0.005])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['top_only'] = False
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.02, 0.02, 0.02])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.05, 0.05, 0.05])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 10
        NET.set_dev_lams([0.1, 0.1, 0.1])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
        sgd_params['result_tag'] = "pt_dev_500x500_s{0:d}_{1:d}".format(su_count, test_num)
        sgd_params['mlp_type'] = 'dev'
        sgd_params['epochs'] = 500
        NET.set_dev_lams([0.1, 0.1, 0.2])
        rng = np.random.RandomState(rng_seed)
        train_ss_mlp(NET, mlp_params, sgd_params, rng, su_count)
    return 1