tfp.experimental.mcmc.chees_rate_criterion
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ChEES rate criterion.
tfp.experimental.mcmc.chees_rate_criterion(
previous_state,
proposed_state,
accept_prob,
trajectory_length,
validate_args=False,
experimental_shard_axis_names=None,
experimental_reduce_chain_axis_names=None
)
This is just like chees_criterion
, but normalized by the trajectory
length:
ChEES rate = 1/4 E[(||x' - E[x]||**2 - ||x - E[x]||**2)**2 /
trajectory_length]
Args |
previous_state
|
(Possibly nested) floating point Tensor . The previous
state of the HMC chain.
|
proposed_state
|
(Possibly nested) floating point Tensor . The proposed
state of the HMC chain.
|
accept_prob
|
Floating Tensor . Probability of acceping the proposed state.
|
trajectory_length
|
Floating Tensor . Trajectory length.
|
validate_args
|
Whether to perform non-static argument validation.
|
experimental_shard_axis_names
|
A structure of string names indicating how
members of the state are sharded.
|
experimental_reduce_chain_axis_names
|
A string or list of string names
indicating which named chain axes to reduce over when computing the
criterion.
|
Returns |
chees_rate
|
The value of the ChEES rate criterion.
|
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Last updated 2023-11-21 UTC.
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