ray/rllib/offline/is_estimator.py

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from ray.rllib.offline.off_policy_estimator import OffPolicyEstimator, \
OffPolicyEstimate
from ray.rllib.utils.annotations import override
from ray.rllib.utils.typing import SampleBatchType
class ImportanceSamplingEstimator(OffPolicyEstimator):
"""The step-wise IS estimator.
Step-wise IS estimator described in https://arxiv.org/pdf/1511.03722.pdf"""
@override(OffPolicyEstimator)
def estimate(self, batch: SampleBatchType) -> OffPolicyEstimate:
self.check_can_estimate_for(batch)
rewards, old_prob = batch["rewards"], batch["action_prob"]
new_prob = self.action_prob(batch)
# calculate importance ratios
p = []
for t in range(batch.count):
if t == 0:
pt_prev = 1.0
else:
pt_prev = p[t - 1]
p.append(pt_prev * new_prob[t] / old_prob[t])
# calculate stepwise IS estimate
V_prev, V_step_IS = 0.0, 0.0
for t in range(batch.count):
V_prev += rewards[t] * self.gamma**t
V_step_IS += p[t] * rewards[t] * self.gamma**t
estimation = OffPolicyEstimate(
"is", {
"V_prev": V_prev,
"V_step_IS": V_step_IS,
"V_gain_est": V_step_IS / max(1e-8, V_prev),
})
return estimation