Esempio n. 1
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def p_net(observed=None, n_y=None, n_z=None, n_samples=None):
    if n_samples is not None:
        warnings.warn('`n_samples` is deprecated, use `n_y` instead.')
        n_y = n_samples

    net = spt.BayesianNet(observed=observed)

    # sample y
    y = net.add('y',
                spt.Categorical(tf.zeros([1, config.n_clusters])),
                n_samples=n_y)

    # sample z ~ p(z|y)
    z = net.add('z',
                gaussian_mixture_prior(y, config.z_dim, config.n_clusters),
                group_ndims=1,
                n_samples=n_z,
                is_reparameterized=False)

    # compute the hidden features for x
    with arg_scope([spt.layers.dense],
                   activation_fn=tf.nn.leaky_relu,
                   kernel_regularizer=spt.layers.l2_regularizer(
                       config.l2_reg)):
        h_x = z
        h_x = spt.layers.dense(h_x, 500)
        h_x = spt.layers.dense(h_x, 500)

    # sample x ~ p(x|z)
    x_logits = spt.layers.dense(h_x, config.x_dim, name='x_logits')
    x = net.add('x', spt.Bernoulli(logits=x_logits), group_ndims=1)

    return net
Esempio n. 2
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def q_net(x, observed=None, n_samples=None):
    net = spt.BayesianNet(observed=observed)

    # compute the hidden features
    with arg_scope([spt.layers.dense],
                   activation_fn=tf.nn.leaky_relu,
                   kernel_regularizer=spt.layers.l2_regularizer(
                       config.l2_reg)):
        h_x = tf.to_float(x)
        h_x = spt.layers.dense(h_x, 500)
        h_x = spt.layers.dense(h_x, 500)

    # sample y ~ q(y|x)
    y_logits = spt.layers.dense(h_x, config.n_clusters, name='y_logits')
    y = net.add('y', spt.Categorical(y_logits), n_samples=n_samples)
    y_one_hot = tf.one_hot(y, config.n_clusters, dtype=tf.float32)

    # sample z ~ q(z|y,x)
    with arg_scope([spt.layers.dense],
                   activation_fn=tf.nn.leaky_relu,
                   kernel_regularizer=spt.layers.l2_regularizer(
                       config.l2_reg)):
        if config.mean_field_assumption_for_q:
            # by mean-field-assumption we let q(z|y,x) = q(z|x)
            h_z = h_x
            z_n_samples = n_samples
        else:
            if n_samples is not None:
                h_z = tf.concat([
                    tf.tile(tf.reshape(h_x, [1, -1, 500]),
                            tf.stack([n_samples, 1, 1])), y_one_hot
                ],
                                axis=-1)
            else:
                h_z = tf.concat([h_x, y_one_hot], axis=-1)
            h_z = spt.layers.dense(h_z, 500)
            z_n_samples = None

    z_mean = spt.layers.dense(h_z, config.z_dim, name='z_mean')
    z_logstd = spt.layers.dense(h_z, config.z_dim, name='z_logstd')
    z = net.add('z',
                spt.Normal(mean=z_mean,
                           logstd=z_logstd,
                           is_reparameterized=False),
                n_samples=z_n_samples,
                group_ndims=1)

    return net
Esempio n. 3
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def p_net(observed=None, n_z=None, is_initializing=False):
    net = spt.BayesianNet(observed=observed)
    normalizer_fn = functools.partial(spt.layers.act_norm,
                                      initializing=is_initializing)

    # sample z ~ p(z)
    def make_component(i):
        normal = spt.Normal(mean=tf.get_variable('mean_{}'.format(i),
                                                 shape=[1, config.z_dim],
                                                 dtype=tf.float32,
                                                 trainable=True),
                            logstd=tf.maximum(
                                tf.get_variable('logstd_{}'.format(i),
                                                shape=[1, config.z_dim],
                                                dtype=tf.float32,
                                                trainable=True),
                                config.z_logstd_min))
        return normal.expand_value_ndims(1)

    components = [
        make_component(i) for i in range(config.n_mixture_components)
    ]
    mixture = spt.Mixture(categorical=spt.Categorical(
        logits=tf.zeros([1, config.n_mixture_components])),
                          components=components,
                          is_reparameterized=True)

    z = net.add('z', mixture, n_samples=n_z)

    # compute the hidden features
    with arg_scope([spt.layers.dense],
                   activation_fn=tf.nn.leaky_relu,
                   normalizer_fn=normalizer_fn,
                   weight_norm=True,
                   kernel_regularizer=spt.layers.l2_regularizer(
                       config.l2_reg)):
        h_z = z
        h_z = spt.layers.dense(h_z, 500)
        h_z = spt.layers.dense(h_z, 500)

    # sample x ~ p(x|z)
    x_logits = spt.layers.dense(h_z, config.x_dim, name='x_logits')
    x = net.add('x', spt.Bernoulli(logits=x_logits), group_ndims=1)

    return net
Esempio n. 4
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def q_net(x, observed=None, n_z=None, is_initializing=False):
    net = spt.BayesianNet(observed=observed)
    normalizer_fn = functools.partial(spt.layers.act_norm,
                                      initializing=is_initializing)

    # compute the hidden features
    with arg_scope([spt.layers.dense],
                   activation_fn=tf.nn.leaky_relu,
                   normalizer_fn=normalizer_fn,
                   weight_norm=True,
                   kernel_regularizer=spt.layers.l2_regularizer(
                       config.l2_reg)):
        h_x = tf.to_float(x)
        h_x = spt.layers.dense(h_x, 500)
        h_x = spt.layers.dense(h_x, 500)

    # sample z ~ q(z|x)
    components = [
        spt.Normal(mean=spt.layers.dense(h_x,
                                         config.z_dim,
                                         name='z_mean_{}'.format(i)),
                   logstd=spt.layers.dense(h_x,
                                           config.z_dim,
                                           name='z_logstd_{}'.format(i)))
        for i in range(config.n_mixture_components)
    ]

    mixture_param_shape = spt.utils.concat_shapes([
        spt.utils.get_shape(components[0].mean), [config.n_mixture_components]
    ])
    mixture = spt.Mixture(
        categorical=spt.Categorical(logits=tf.zeros(mixture_param_shape)),
        components=components,
        is_reparameterized=True)
    z = net.add('z', mixture, n_samples=n_z, group_ndims=1)

    return net
Esempio n. 5
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def p_net(observed=None, n_z=None, is_training=False, is_initializing=False):
    """
    Generative net
    return p net structure.
    """
    net = spt.BayesianNet(observed=observed)

    normalizer_fn = None if not config.act_norm else functools.partial(
        spt.layers.act_norm,
        axis=-1 if config.channels_last else -3,
        initializing=is_initializing,
        value_ndims=3,
    )

    def make_component(i):
        normal = spt.Normal(mean=tf.get_variable('mean_{}'.format(i),
                                                 shape=[1, config.z_dim],
                                                 dtype=tf.float32,
                                                 trainable=True),
                            logstd=tf.maximum(
                                tf.get_variable('logstd_{}'.format(i),
                                                shape=[1, config.z_dim],
                                                dtype=tf.float32,
                                                trainable=True), -1.))
        return normal.expand_value_ndims(1)

    components = [make_component(i) for i in range(config.n_c)]
    mixture = spt.Mixture(
        categorical=spt.Categorical(logits=tf.zeros([1, config.n_c])),
        components=components,
        is_reparameterized=True)
    z = net.add('z', mixture, n_samples=n_z)

    print("=" * 10 + "pnet" + "=" * 10)
    # compute the hidden features
    with arg_scope([spt.layers.resnet_deconv2d_block],
                   kernel_size=config.kernel_size2,
                   shortcut_kernel_size=config.shortcut_kernel_size,
                   activation_fn=tf.nn.elu,
                   normalizer_fn=normalizer_fn,
                   kernel_regularizer=spt.layers.l2_regularizer(config.l2_reg),
                   channels_last=config.channels_last):
        print("px:%s" % z.get_shape())
        h_z = spt.layers.dense(
            z,
            int(config.timeLength / (config.strides1**2) /
                (config.strides2**2) * int(config.metricNumber)))
        h_z = spt.ops.reshape_tail(
            h_z,
            ndims=1,
            shape=(int(config.timeLength /
                       (config.strides1**2) / (config.strides2**2)),
                   int(config.metricNumber), 1) if config.channels_last else
            (1,
             int(config.timeLength / (config.strides1**2) /
                 (config.strides2**2)), int(config.metricNumber)))
        print("p1:%s" % h_z.get_shape())
        h_z = spt.layers.resnet_deconv2d_block(
            h_z,
            1,
            kernel_size=(config.kernel_size2, 1),
            strides=(config.strides2, 1))
        print("p2:%s" % h_z.get_shape())
        h_z = spt.layers.resnet_deconv2d_block(
            h_z,
            1,
            kernel_size=(config.kernel_size2, 1),
            strides=(config.strides2, 1))
        print("p3:%s" % h_z.get_shape())
        h_z = spt.layers.resnet_deconv2d_block(
            h_z,
            1,
            kernel_size=(config.kernel_size1, 1),
            strides=(config.strides1, 1))
        print("p4:%s" % h_z.get_shape())
        h_z = spt.layers.resnet_deconv2d_block(
            h_z,
            1,
            kernel_size=(config.kernel_size1, 1),
            strides=(config.strides1, 1))
        print("p5:%s" % h_z.get_shape())

    # sample x ~ p(x|z)
    x_mean = spt.layers.conv2d(h_z,
                               1, (1, 1),
                               padding='same',
                               name='x_mean',
                               channels_last=config.channels_last)
    x_logstd = spt.layers.conv2d(
        h_z,
        1,
        (1, 1),
        padding='same',
        name='x_logstd',
        channels_last=config.channels_last,
        activation_fn=tf.nn.elu,
    ) + config.std_epsilon
    x = net.add('x',
                spt.Normal(mean=x_mean, logstd=x_logstd),
                n_samples=n_z,
                group_ndims=3)
    print("p6:%s, %s, %s" %
          (x_mean.get_shape(), x_logstd.get_shape(), x.get_shape()))

    return net
Esempio n. 6
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def q_net(x,
          observed=None,
          n_z=None,
          is_training=False,
          is_initializing=False):
    """
    Inference net
    param x: input X, multivariate time series data.
    return q net structure.
    """
    net = spt.BayesianNet(observed=observed)

    normalizer_fn = None if not config.act_norm else functools.partial(
        spt.layers.act_norm,
        axis=-1 if config.channels_last else -3,
        initializing=is_initializing,
        value_ndims=3,
    )
    print("=" * 10 + "qnet" + "=" * 10)

    # compute the hidden features
    with arg_scope([spt.layers.resnet_conv2d_block],
                   kernel_size=config.kernel_size2,
                   shortcut_kernel_size=config.shortcut_kernel_size,
                   activation_fn=tf.nn.elu,
                   normalizer_fn=normalizer_fn,
                   kernel_regularizer=spt.layers.l2_regularizer(config.l2_reg),
                   channels_last=config.channels_last):
        print("qx:%s" % x.get_shape())
        h_x = tf.reshape(tf.to_float(x),
                         [-1, config.timeLength, config.metricNumber, 1]
                         if config.channels_last else
                         [-1, 1, config.timeLength, config.metricNumber])
        print("q1:%s" % h_x.get_shape())
        h_x = spt.layers.resnet_conv2d_block(h_x,
                                             1,
                                             kernel_size=(config.kernel_size1,
                                                          1),
                                             strides=(config.strides1, 1))
        print("q2:%s" % h_x.get_shape())
        h_x = spt.layers.resnet_conv2d_block(h_x,
                                             1,
                                             kernel_size=(config.kernel_size1,
                                                          1),
                                             strides=(config.strides1, 1))
        print("q3:%s" % h_x.get_shape())
        h_x = spt.layers.resnet_conv2d_block(h_x,
                                             1,
                                             kernel_size=(config.kernel_size2,
                                                          1),
                                             strides=(config.strides2, 1))
        print("q4:%s" % h_x.get_shape())
        h_x = spt.layers.resnet_conv2d_block(h_x,
                                             1,
                                             kernel_size=(config.kernel_size2,
                                                          1),
                                             strides=(config.strides2, 1))
        print("q5:%s" % h_x.get_shape())

    h_x = spt.ops.reshape_tail(h_x, ndims=3, shape=[-1])
    print("q6:%s" % h_x.get_shape())

    # sample y ~ q(y|x)
    c_logits = spt.layers.dense(h_x, config.n_c, name='c_logits')
    c = net.add('c', spt.Categorical(c_logits))
    c_one_hot = tf.one_hot(c, config.n_c, dtype=tf.float32)
    print("qc:%s, %s, %s" % (c_logits.shape, c.shape, c_one_hot.shape))
    h_z = h_x

    # sample z ~ q(z|x)
    z_mean = spt.layers.dense(h_z, config.z_dim, name='z_mean')
    z_logstd = spt.layers.dense(
        h_z, config.z_dim, name='z_logstd',
        activation_fn=tf.nn.elu) + config.std_epsilon
    z = net.add('z',
                spt.Normal(mean=z_mean, logstd=z_logstd),
                n_samples=n_z,
                group_ndims=1)
    print("q7:%s, %s, %s" %
          (z_mean.get_shape(), z_logstd.get_shape(), z.get_shape()))

    return net