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Specifies a mean-value parameterized exponential family.
tfp.glm.ExponentialFamily( name=None ) Subclasses implement exponential-family distribution properties (e.g., log_prob, variance) as a function of a real-value which is transformed via some link function to be interpreted as the distribution's mean. The distribution is parameterized by this mean, i.e., "mean-value parameterized."
Subclasses are typically used to specify a Generalized Linear Model (GLM). A GLM is a generalization of linear regression which enables efficient fitting of log-likelihood losses beyond just assuming Normal noise. See tfp.glm.fit for more details.
Subclasses must implement _as_distribution which does not need to be either "tape-safe" or "variable-safe." (tfp.glm families are however guaranteed to be both tape and variable safe.)
Subclasses may optionally implement _call and _log_prob which otherwise default to:
def _call(self, predicted_linear_response): with tf.GradientTape(watch_accessed_variables=False) as tape: tape.watch(predicted_linear_response) likelihood = self.as_distribution(predicted_linear_response) mean = likelihood.mean() variance = likelihood.variance() grad_mean = tape.gradient(mean, predicted_linear_response) return mean, variance, grad_mean def _log_prob(self, response, predicted_linear_response): likelihood = self.as_distribution(predicted_linear_response) return likelihood.log_prob(response) In context of tfp.glm.fit and tfp.glm.fit_sparse, these functions are used to find the best fitting weights for given model matrix ("X") and responses ("Y").
Args | |
|---|---|
name | Python str used as TF namescope for ops created by member functions. Default value: None (i.e., the subclass name). |
Attributes | |
|---|---|
name | Returns the name of this module as passed or determined in the ctor. |
name_scope | Returns a tf.name_scope instance for this class. |
non_trainable_variables | Sequence of non-trainable variables owned by this module and its submodules. |
submodules | Sequence of all sub-modules. Submodules are modules which are properties of this module, or found as properties of modules which are properties of this module (and so on).
|
trainable_variables | Sequence of trainable variables owned by this module and its submodules. |
variables | Sequence of variables owned by this module and its submodules. |
Methods
as_distribution
as_distribution( predicted_linear_response, name=None ) Builds a mean parameterized TFP Distribution from linear response.
Example:
model = tfp.glm.Bernoulli() r = tfp.glm.compute_predicted_linear_response(x, w) yhat = model.as_distribution(r) | Args | |
|---|---|
predicted_linear_response | response-shaped Tensor representing linear predictions based on new model_coefficients, i.e., tfp.glm.compute_predicted_linear_response( model_matrix, model_coefficients, offset). |
name | Python str used as TF namescope for ops created by member functions. Default value: None (i.e., 'log_prob'). |
| Returns | |
|---|---|
model | tfp.distributions.Distribution-like object with mean parameterized by predicted_linear_response. |
log_prob
log_prob( response, predicted_linear_response, name=None ) Computes D(param=mean(r)).log_prob(response) for linear response, r.
| Args | |
|---|---|
response | float-like Tensor representing observed ("actual") responses. |
predicted_linear_response | float-like Tensor corresponding to tf.linalg.matmul(model_matrix, weights). |
name | Python str used as TF namescope for ops created by member functions. Default value: None (i.e., 'log_prob'). |
| Returns | |
|---|---|
log_prob | Tensor with shape and dtype of predicted_linear_response representing the distribution prescribed log-probability of the observed responses. |
with_name_scope
@classmethodwith_name_scope( method )
Decorator to automatically enter the module name scope.
class MyModule(tf.Module):@tf.Module.with_name_scopedef __call__(self, x):if not hasattr(self, 'w'):self.w = tf.Variable(tf.random.normal([x.shape[1], 3]))return tf.matmul(x, self.w)
Using the above module would produce tf.Variables and tf.Tensors whose names included the module name:
mod = MyModule()mod(tf.ones([1, 2]))<tf.Tensor: shape=(1, 3), dtype=float32, numpy=..., dtype=float32)>mod.w<tf.Variable 'my_module/Variable:0' shape=(2, 3) dtype=float32,numpy=..., dtype=float32)>
| Args | |
|---|---|
method | The method to wrap. |
| Returns | |
|---|---|
| The original method wrapped such that it enters the module's name scope. |
__call__
__call__( predicted_linear_response, name=None ) Computes mean(r), var(mean), d/dr mean(r) for linear response, r.
Here mean and var are the mean and variance of the sufficient statistic, which may not be the same as the mean and variance of the random variable itself. If the distribution's density has the form
p_Y(y) = h(y) Exp[dot(theta, T(y)) - A] where theta and A are constants and h and T are known functions, then mean and var are the mean and variance of T(Y). In practice, often T(Y) := Y and in that case the distinction doesn't matter.
| Args | |
|---|---|
predicted_linear_response | float-like Tensor corresponding to tf.linalg.matmul(model_matrix, weights). |
name | Python str used as TF namescope for ops created by member functions. Default value: None (i.e., 'call'). |
| Returns | |
|---|---|
mean | Tensor with shape and dtype of predicted_linear_response representing the distribution prescribed mean, given the prescribed linear-response to mean mapping. |
variance | Tensor with shape and dtype of predicted_linear_response representing the distribution prescribed variance, given the prescribed linear-response to mean mapping. |
grad_mean | Tensor with shape and dtype of predicted_linear_response representing the gradient of the mean with respect to the linear-response and given the prescribed linear-response to mean mapping. |
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