pymc.Empirical#
- class pymc.Empirical(trace=None, size=None, **kwargs)[source]#
Single Group Full Rank Approximation
Builds Approximation instance from a given trace, it has the same interface as variational approximation
Methods
Empirical.__init__([trace, size])Empirical.collect(item)Allows to statically evaluate any symbolic expression over the trace.
Dev - optimizations for logP.
Dev - creates correct replacements for initial depending on sample size and deterministic flag
Empirical.rslice(name)Dev - vectorized sampling for named random variable without call to pytensor.scan.
Empirical.sample([draws, random_seed, ...])Draw samples from variational posterior.
Empirical.sample_node(node[, size, ...])Samples given node or nodes over shared posterior
Empirical.set_size_and_deterministic(node, s, d)Dev - after node is sampled via
symbolic_sample_over_posterior()orsymbolic_single_sample()new random generator can be allocated and applied to nodeDev - performs sampling of node applying independent samples from posterior each time.
Empirical.symbolic_single_sample(node[, ...])Dev - performs sampling of node applying single sample from posterior.
Empirical.to_flat_input(node[, ...])Dev - replace vars with flattened view stored in self.inputs
Attributes
all_histogramsany_histogramsdatalogpDev - computes \(E_{q}(data term)\) from model via pytensor.scan that can be optimized later
datalogp_normDev - normalized \(E_{q}(data term)\)
ddimhas_logqinputsjoint_histogramlogpDev - computes \(E_{q}(logP)\) from model via pytensor.scan that can be optimized later
logp_normDev - normalized \(E_{q}(logP)\)
logqDev - collects logQ for all groups
logq_normDev - collects logQ for all groups and normalizes it
ndimparamsreplacementsDev - all replacements from groups to replace PyMC random variables with approximation
sample_dict_fnscale_cost_to_minibatchDev - Property to control scaling cost to minibatch
single_symbolic_datalogpDev - for single MC sample estimate of \(E_{q}(data term)\) pytensor.scan is not needed and code can be optimized
single_symbolic_logpDev - for single MC sample estimate of \(E_{q}(logP)\) pytensor.scan is not needed and code can be optimized
single_symbolic_varlogpDev - for single MC sample estimate of \(E_{q}(prior term)\) pytensor.scan is not needed and code can be optimized
sized_symbolic_datalogpDev - computes sampled data term from model via pytensor.scan
sized_symbolic_logpDev - computes sampled logP from model via pytensor.scan
sized_symbolic_varlogpDev - computes sampled prior term from model via pytensor.scan
symbolic_logqDev - collects symbolic_logq for all groups
symbolic_normalizing_constantDev - normalizing constant for self.logq, scales it to minibatch_size instead of total_size.
symbolic_randomsymbolic_randomsvarlogpDev - computes \(E_{q}(prior term)\) from model via pytensor.scan that can be optimized later
varlogp_normDev - normalized \(E_{q}(prior term)\)