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Edward2

Edward2 is a simple probabilistic programming language. It provides core utilities in deep learning ecosystems so that one can write models as probabilistic programs and manipulate a model's computation for flexible training and inference. It's organized as follows:

Are you upgrading from Edward? Check out the guide Upgrading_from_Edward_to_Edward2.md. The core utilities are fairly low-level: if you'd like a high-level module for uncertainty modeling, check out the guide for Bayesian Layers. We recommend the Uncertainty Baselines if you'd like to build on research-ready code.

Installation

We recommend the latest development version. To install, run

pip install "edward2 @ git+https://github.com/google/edward2.git"

You can also install the latest stable version using the following. As a caveat, however, we very rarely update the stable version (this is a passion project maintained by part-timers and scheduling releases every so often sucks up time).

pip install edward2

Edward2 supports three backends: TensorFlow (the default), JAX, and NumPy (see below to activate). Installing edward2 does not automatically install any backend. To get these dependencies, use for example pip install edward2[tensorflow]", replacing tensorflow for the appropriate backend. Sometimes Edward2 uses the latest changes from TensorFlow in which you'll need TensorFlow's nightly package: use pip install edward2[tf- nightly].

1. Models as Probabilistic Programs

Random Variables

In Edward2, we use RandomVariables to specify a probabilistic model's structure. A random variable rv carries a probability distribution (rv.distribution), which is a TensorFlow Distribution instance governing the random variable's methods such as log_prob and sample.

Random variables are formed like TensorFlow Distributions.

import edward2 as ed

normal_rv = ed.Normal(loc=0., scale=1.)
## <ed.RandomVariable 'Normal/' shape=() dtype=float32 numpy=0.0024812892>
normal_rv.distribution.log_prob(1.231)
## <tf.Tensor: id=11, shape=(), dtype=float32, numpy=-1.6766189>

dirichlet_rv = ed.Dirichlet(concentration=tf.ones([2, 3]))
## <ed.RandomVariable 'Dirichlet/' shape=(2, 3) dtype=float32 numpy=
array([[0.15864784, 0.01217205, 0.82918006],
       [0.23385087, 0.69622266, 0.06992647]], dtype=float32)>

By default, instantiating a random variable rv creates a sampling op to form the tensor rv.value ~ rv.distribution.sample(). The default number of samples (controllable via the sample_shape argument to rv) is one, and if the optional value argument is provided, no sampling op is created. Random variables can interoperate with TensorFlow ops: the TF ops operate on the sample.

x = ed.Normal(loc=tf.zeros(2), scale=tf.ones(2))
y = 5.
x + y, x / y
## (<tf.Tensor: id=109, shape=(2,), dtype=float32, numpy=array([3.9076924, 4.588356 ], dtype=float32)>,
##  <tf.Tensor: id=111, shape=(2,), dtype=float32, numpy=array([-0.21846154, -0.08232877], dtype=float32)>)
tf.tanh(x * y)
## <tf.Tensor: id=114, shape=(2,), dtype=float32, numpy=array([-0.99996394, -0.9679181 ], dtype=float32)>
x[1]  # 2nd normal rv
## <ed.RandomVariable 'Normal/' shape=() dtype=float32 numpy=-0.41164386>

Probabilistic Models

Probabilistic models in Edward2 are expressed as Python functions that instantiate one or more RandomVariables. Typically, the function ("program") executes the generative process and returns samples. Inputs to the function can be thought of as values the model conditions on.

Below we write Bayesian logistic regression, where binary outcomes are generated given features, coefficients, and an intercept. There is a prior over the coefficients and intercept. Executing the function adds operations samples coefficients and intercept from the prior and uses these samples to compute the outcomes.

def logistic_regression(features):
  """Bayesian logistic regression p(y | x) = int p(y | x, w, b) p(w, b) dwdb."""
  coeffs = ed.Normal(loc=tf.zeros(features.shape[1]), scale=1., name="coeffs")
  intercept = ed.Normal(loc=0., scale=1., name="intercept")
  outcomes = ed.Bernoulli(
      logits=tf.tensordot(features, coeffs, [[1], [0]]) + intercept,
      name="outcomes")
  return outcomes

num_features = 10
features = tf.random.normal([100, num_features])
outcomes = logistic_regression(features)
# <ed.RandomVariable 'outcomes/' shape=(100,) dtype=int32 numpy=
# array([1, 0, ... 0, 1], dtype=int32)>

Edward2 programs can also represent distributions beyond those which directly model data. For example, below we write a learnable distribution with the intention to approximate it to the logistic regression posterior.

def logistic_regression_posterior(coeffs_loc, coeffs_scale,
                                  intercept_loc, intercept_scale):
  """Posterior of Bayesian logistic regression p(w, b | {x, y})."""
  coeffs = ed.MultivariateNormalTriL(
      loc=coeffs_loc,
      scale_tril=tfp.trainable_distributions.tril_with_diag_softplus_and_shift(
          coeffs_scale),
      name="coeffs_posterior")
  intercept = ed.Normal(
      loc=intercept_loc,
      scale=tf.nn.softplus(intercept_scale) + 1e-5,
      name="intercept_posterior")
  return coeffs, intercept

coeffs_loc = tf.Variable(tf.random.normal([num_features]))
coeffs_scale = tf.Variable(tf.random.normal(
    [num_features*(num_features+1) // 2]))

intercept_loc = tf.Variable(tf.random.normal([]))
intercept_scale = tf.Variable(tf.random.normal([]))
posterior_coeffs, posterior_intercept = logistic_regression_posterior(
    coeffs_loc, coeffs_scale, intercept_loc, intercept_scale)

2. Manipulating Model Computation

Tracing

Training and testing probabilistic models typically require more than just samples from the generative process. To enable flexible training and testing, we manipulate the model's computation using tracing.

A tracer is a function that acts on another function f and its arguments *args, **kwargs. It performs various computations before returning an output (typically f(*args, **kwargs): the result of applying the function itself). The ed.trace context manager pushes tracers onto a stack, and any traceable function is intercepted by the stack. All random variable constructors are traceable.

Below we trace the logistic regression model's generative process. In particular, we make predictions with its learned posterior means rather than with its priors.

def set_prior_to_posterior_mean(f, *args, **kwargs):
  """Forms posterior predictions, setting each prior to its posterior mean."""
  name = kwargs.get("name")
  if name == "coeffs":
    return posterior_coeffs.distribution.mean()
  elif name == "intercept":
    return posterior_intercept.distribution.mean()
  return f(*args, **kwargs)

with ed.trace(set_prior_to_posterior_mean):
  predictions = logistic_regression(features)

training_accuracy = (
    tf.reduce_sum(tf.cast(tf.equal(predictions, outcomes), tf.float32)) /
    tf.cast(outcomes.shape[0], tf.float32))

Program Transformations

Using tracing, one can also apply program transformations, which map from one representation of a model to another. This provides convenient access to different model properties depending on the downstream use case.

For example, Markov chain Monte Carlo algorithms often require a model's log-joint probability function as input. Below we take the Bayesian logistic regression program which specifies a generative process, and apply the built-in ed.make_log_joint transformation to obtain its log-joint probability function. The log-joint function takes as input the generative program's original inputs as well as random variables in the program. It returns a scalar Tensor summing over all random variable log-probabilities.

In our example, features and outcomes are fixed, and we want to use Hamiltonian Monte Carlo to draw samples from the posterior distribution of coeffs and intercept. To this use, we create target_log_prob_fn, which takes just coeffs and intercept as arguments and pins the input features and output rv outcomes to its known values.

import no_u_turn_sampler  # local file import

# Set up training data.
features = tf.random.normal([100, 55])
outcomes = tf.random.uniform([100], minval=0, maxval=2, dtype=tf.int32)

# Pass target log-probability function to MCMC transition kernel.
log_joint = ed.make_log_joint_fn(logistic_regression)

def target_log_prob_fn(coeffs, intercept):
  """Target log-probability as a function of states."""
  return log_joint(features,
                   coeffs=coeffs,
                   intercept=intercept,
                   outcomes=outcomes)

coeffs_samples = []
intercept_samples = []
coeffs = tf.random.normal([55])
intercept = tf.random.normal([])
target_log_prob = None
grads_target_log_prob = None
for _ in range(1000):
  [
      [coeffs, intercepts],
      target_log_prob,
      grads_target_log_prob,
  ] = no_u_turn_sampler.kernel(
          target_log_prob_fn=target_log_prob_fn,
          current_state=[coeffs, intercept],
          step_size=[0.1, 0.1],
          current_target_log_prob=target_log_prob,
          current_grads_target_log_prob=grads_target_log_prob)
  coeffs_samples.append(coeffs)
  intercept_samples.append(coeffs)

The returned coeffs_samples and intercept_samples contain 1,000 posterior samples for coeffs and intercept respectively. They may be used, for example, to evaluate the model's posterior predictive on new data.

Using the JAX or NumPy backend

Using alternative backends is as simple as the following:

import edward2.numpy as ed  # NumPy backend
import edward2.jax as ed  # or, JAX backend

In the NumPy backend, Edward2 wraps SciPy distributions. For example, here's linear regression.

def linear_regression(features, prior_precision):
  beta = ed.norm.rvs(loc=0.,
                     scale=1. / np.sqrt(prior_precision),
                     size=features.shape[1])
  y = ed.norm.rvs(loc=np.dot(features, beta), scale=1., size=1)
  return y

References

In general, we recommend citing the following article.

Tran, D., Hoffman, M. D., Moore, D., Suter, C., Vasudevan S., Radul A., Johnson M., and Saurous R. A. (2018). Simple, Distributed, and Accelerated Probabilistic Programming. In Neural Information Processing Systems.

@inproceedings{tran2018simple,
  author = {Dustin Tran and Matthew D. Hoffman and Dave Moore and Christopher Suter and Srinivas Vasudevan and Alexey Radul and Matthew Johnson and Rif A. Saurous},
  title = {Simple, Distributed, and Accelerated Probabilistic Programming},
  booktitle = {Neural Information Processing Systems},
  year = {2018},
}

If you'd like to cite the layers module specifically, use the following article.

Tran, D., Dusenberry M. W., van der Wilk M., Hafner D. (2019). Bayesian Layers: A Module for Neural Network Uncertainty. In Neural Information Processing Systems.

@inproceedings{tran2019bayesian,
  author = {Dustin Tran and Michael W. Dusenberry and Danijar Hafner and Mark van der Wilk},
  title={Bayesian {L}ayers: A module for neural network uncertainty},
  booktitle = {Neural Information Processing Systems},
  year={2019}
}