Kebun Binatang Distribusi yang Dapat Dipelajari

Lihat di TensorFlow.org Jalankan di Google Colab Lihat sumber di GitHub Unduh buku catatan

Dalam colab ini kami menunjukkan berbagai contoh membangun distribusi yang dapat dipelajari ("trainable"). (Kami tidak berusaha untuk menjelaskan distribusi, hanya untuk menunjukkan bagaimana membangunnya.)

import numpy as np
import tensorflow.compat.v2 as tf
import tensorflow_probability as tfp
from tensorflow_probability.python.internal import prefer_static
tfb = tfp.bijectors
tfd = tfp.distributions
tf.enable_v2_behavior()
event_size = 4
num_components = 3

Dipelajari multivariat normal dengan Identity Scaled untuk chol(Cov)

learnable_mvn_scaled_identity = tfd.Independent(
    tfd.Normal(
        loc=tf.Variable(tf.zeros(event_size), name='loc'),
        scale=tfp.util.TransformedVariable(
            tf.ones([1]),
            bijector=tfb.Exp(),
            name='scale')),
    reinterpreted_batch_ndims=1,
    name='learnable_mvn_scaled_identity')

print(learnable_mvn_scaled_identity)
print(learnable_mvn_scaled_identity.trainable_variables)
tfp.distributions.Independent("learnable_mvn_scaled_identity", batch_shape=[], event_shape=[4], dtype=float32)
(<tf.Variable 'loc:0' shape=(4,) dtype=float32, numpy=array([0., 0., 0., 0.], dtype=float32)>, <tf.Variable 'scale:0' shape=(1,) dtype=float32, numpy=array([0.], dtype=float32)>)

Dipelajari multivariat normal dengan Diagonal untuk chol(Cov)

learnable_mvndiag = tfd.Independent(
    tfd.Normal(
        loc=tf.Variable(tf.zeros(event_size), name='loc'),
        scale=tfp.util.TransformedVariable(
            tf.ones(event_size),
            bijector=tfb.Softplus(),  # Use Softplus...cuz why not?
            name='scale')),
    reinterpreted_batch_ndims=1,
    name='learnable_mvn_diag')

print(learnable_mvndiag)
print(learnable_mvndiag.trainable_variables)
tfp.distributions.Independent("learnable_mvn_diag", batch_shape=[], event_shape=[4], dtype=float32)
(<tf.Variable 'loc:0' shape=(4,) dtype=float32, numpy=array([0., 0., 0., 0.], dtype=float32)>, <tf.Variable 'scale:0' shape=(4,) dtype=float32, numpy=array([0.54132485, 0.54132485, 0.54132485, 0.54132485], dtype=float32)>)

Campuran Multivariat Normal (Spherical)

learnable_mix_mvn_scaled_identity = tfd.MixtureSameFamily(
    mixture_distribution=tfd.Categorical(
        logits=tf.Variable(
            # Changing the `1.` intializes with a geometric decay.
            -tf.math.log(1.) * tf.range(num_components, dtype=tf.float32),
            name='logits')),
    components_distribution=tfd.Independent(
        tfd.Normal(
            loc=tf.Variable(
              tf.random.normal([num_components, event_size]),
              name='loc'),
            scale=tfp.util.TransformedVariable(
              10. * tf.ones([num_components, 1]),
              bijector=tfb.Softplus(),  # Use Softplus...cuz why not?
              name='scale')),
        reinterpreted_batch_ndims=1),
    name='learnable_mix_mvn_scaled_identity')

print(learnable_mix_mvn_scaled_identity)
print(learnable_mix_mvn_scaled_identity.trainable_variables)
tfp.distributions.MixtureSameFamily("learnable_mix_mvn_scaled_identity", batch_shape=[], event_shape=[4], dtype=float32)
(<tf.Variable 'logits:0' shape=(3,) dtype=float32, numpy=array([-0., -0., -0.], dtype=float32)>, <tf.Variable 'loc:0' shape=(3, 4) dtype=float32, numpy=
array([[ 0.21316044,  0.18825649,  1.3055958 , -1.4072137 ],
       [-1.6604203 , -0.9415946 , -1.1349488 , -0.4928658 ],
       [-0.9672405 ,  0.45094398, -2.615817  ,  3.7891428 ]],
      dtype=float32)>, <tf.Variable 'scale:0' shape=(3, 1) dtype=float32, numpy=
array([[9.999954],
       [9.999954],
       [9.999954]], dtype=float32)>)

Campuran Multivariat Normal (bola) dengan berat campuran pertama tidak dapat dipelajari

learnable_mix_mvndiag_first_fixed = tfd.MixtureSameFamily(
    mixture_distribution=tfd.Categorical(
        logits=tfp.util.TransformedVariable(
            # Initialize logits as geometric decay.
            -tf.math.log(1.5) * tf.range(num_components, dtype=tf.float32),
            tfb.Pad(paddings=[[1, 0]], constant_values=0)),
            name='logits'),
    components_distribution=tfd.Independent(
        tfd.Normal(
            loc=tf.Variable(
                # Use Rademacher...cuz why not?
                tfp.random.rademacher([num_components, event_size]),
                name='loc'),
            scale=tfp.util.TransformedVariable(
                10. * tf.ones([num_components, 1]),
                bijector=tfb.Softplus(),  # Use Softplus...cuz why not?
                name='scale')),
        reinterpreted_batch_ndims=1),
    name='learnable_mix_mvndiag_first_fixed')

print(learnable_mix_mvndiag_first_fixed)
print(learnable_mix_mvndiag_first_fixed.trainable_variables)
tfp.distributions.MixtureSameFamily("learnable_mix_mvndiag_first_fixed", batch_shape=[], event_shape=[4], dtype=float32)
(<tf.Variable 'Variable:0' shape=(2,) dtype=float32, numpy=array([-0.4054651, -0.8109302], dtype=float32)>, <tf.Variable 'loc:0' shape=(3, 4) dtype=float32, numpy=
array([[ 1.,  1., -1., -1.],
       [ 1., -1.,  1.,  1.],
       [-1.,  1., -1., -1.]], dtype=float32)>, <tf.Variable 'scale:0' shape=(3, 1) dtype=float32, numpy=
array([[9.999954],
       [9.999954],
       [9.999954]], dtype=float32)>)

Campuran multivariat normal (penuh Cov )

learnable_mix_mvntril = tfd.MixtureSameFamily(
    mixture_distribution=tfd.Categorical(
        logits=tf.Variable(
            # Changing the `1.` intializes with a geometric decay.
            -tf.math.log(1.) * tf.range(num_components, dtype=tf.float32),
            name='logits')),
    components_distribution=tfd.MultivariateNormalTriL(
        loc=tf.Variable(tf.zeros([num_components, event_size]), name='loc'),
        scale_tril=tfp.util.TransformedVariable(
            10. * tf.eye(event_size, batch_shape=[num_components]),
            bijector=tfb.FillScaleTriL(),
            name='scale_tril')),
    name='learnable_mix_mvntril')

print(learnable_mix_mvntril)
print(learnable_mix_mvntril.trainable_variables)
tfp.distributions.MixtureSameFamily("learnable_mix_mvntril", batch_shape=[], event_shape=[4], dtype=float32)
(<tf.Variable 'loc:0' shape=(3, 4) dtype=float32, numpy=
array([[0., 0., 0., 0.],
       [0., 0., 0., 0.],
       [0., 0., 0., 0.]], dtype=float32)>, <tf.Variable 'scale_tril:0' shape=(3, 10) dtype=float32, numpy=
array([[9.999945, 0.      , 0.      , 0.      , 9.999945, 9.999945,

        0.      , 0.      , 0.      , 9.999945],
       [9.999945, 0.      , 0.      , 0.      , 9.999945, 9.999945,
        0.      , 0.      , 0.      , 9.999945],
       [9.999945, 0.      , 0.      , 0.      , 9.999945, 9.999945,
        0.      , 0.      , 0.      , 9.999945]], dtype=float32)>, <tf.Variable 'logits:0' shape=(3,) dtype=float32, numpy=array([-0., -0., -0.], dtype=float32)>)

Campuran multivariat normal (penuh Cov ) dengan unlearnable pertama campuran & Komponen pertama

# Make a bijector which pads an eye to what otherwise fills a tril.
num_tril_nonzero = lambda num_rows: num_rows * (num_rows + 1) // 2

num_tril_rows = lambda nnz: prefer_static.cast(
    prefer_static.sqrt(0.25 + 2. * prefer_static.cast(nnz, tf.float32)) - 0.5,
    tf.int32)

# TFP doesn't have a concat bijector, so we roll out our own.
class PadEye(tfb.Bijector):

  def __init__(self, tril_fn=None):
    if tril_fn is None:
      tril_fn = tfb.FillScaleTriL()
    self._tril_fn = getattr(tril_fn, 'inverse', tril_fn)
    super(PadEye, self).__init__(
        forward_min_event_ndims=2,
        inverse_min_event_ndims=2,
        is_constant_jacobian=True,
        name='PadEye')

  def _forward(self, x):
    num_rows = int(num_tril_rows(tf.compat.dimension_value(x.shape[-1])))
    eye = tf.eye(num_rows, batch_shape=prefer_static.shape(x)[:-2])
    return tf.concat([self._tril_fn(eye)[..., tf.newaxis, :], x],
                     axis=prefer_static.rank(x) - 2)

  def _inverse(self, y):
    return y[..., 1:, :]

  def _forward_log_det_jacobian(self, x):
    return tf.zeros([], dtype=x.dtype)

  def _inverse_log_det_jacobian(self, y):
    return tf.zeros([], dtype=y.dtype)

  def _forward_event_shape(self, in_shape):
    n = prefer_static.size(in_shape)
    return in_shape + prefer_static.one_hot(n - 2, depth=n, dtype=tf.int32)

  def _inverse_event_shape(self, out_shape):
    n = prefer_static.size(out_shape)
    return out_shape - prefer_static.one_hot(n - 2, depth=n, dtype=tf.int32)


tril_bijector = tfb.FillScaleTriL(diag_bijector=tfb.Softplus())
learnable_mix_mvntril_fixed_first = tfd.MixtureSameFamily(
  mixture_distribution=tfd.Categorical(
      logits=tfp.util.TransformedVariable(
          # Changing the `1.` intializes with a geometric decay.
          -tf.math.log(1.) * tf.range(num_components, dtype=tf.float32),
          bijector=tfb.Pad(paddings=[(1, 0)]),
          name='logits')),
  components_distribution=tfd.MultivariateNormalTriL(
      loc=tfp.util.TransformedVariable(
          tf.zeros([num_components, event_size]),
          bijector=tfb.Pad(paddings=[(1, 0)], axis=-2),
          name='loc'),
      scale_tril=tfp.util.TransformedVariable(
          10. * tf.eye(event_size, batch_shape=[num_components]),
          bijector=tfb.Chain([tril_bijector, PadEye(tril_bijector)]),
          name='scale_tril')),
  name='learnable_mix_mvntril_fixed_first')


print(learnable_mix_mvntril_fixed_first)
print(learnable_mix_mvntril_fixed_first.trainable_variables)
tfp.distributions.MixtureSameFamily("learnable_mix_mvntril_fixed_first", batch_shape=[], event_shape=[4], dtype=float32)
(<tf.Variable 'loc:0' shape=(2, 4) dtype=float32, numpy=
array([[0., 0., 0., 0.],
       [0., 0., 0., 0.]], dtype=float32)>, <tf.Variable 'scale_tril:0' shape=(2, 10) dtype=float32, numpy=
array([[9.999945, 0.      , 0.      , 0.      , 9.999945, 9.999945,

        0.      , 0.      , 0.      , 9.999945],
       [9.999945, 0.      , 0.      , 0.      , 9.999945, 9.999945,
        0.      , 0.      , 0.      , 9.999945]], dtype=float32)>, <tf.Variable 'logits:0' shape=(2,) dtype=float32, numpy=array([-0., -0.], dtype=float32)>)