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In the Reinforcement Learning book by Sutton & Barto, version 2018, authors provided a formula (Eq. 7.14, page 151) of the off-policy form with control variate : enter image description here

How can I understand this equation? I can understand if we are on-policy, the later two terms inside the gamma part cancels out. But anyone why do we have to multiply the rho with G_{t+1:h}? How does this formula make any sense?

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  • I would add the formula in the question. – Afshin Oroojlooy Aug 19 '19 at 16:42
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    I’m voting to close this question because this not a programming question as defined in the help center. It would probably be more suited to Cross Validated. – David Buck Oct 24 '20 at 15:02
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The \rho_{t+1} should always be there, even without control variate. This is because this equation concerns state-action values. It becomes clearer when you write out the arguments of the returns: enter image description here where enter image description here, with pi and b the target and behavior policies respectively, and A_{t+1} was sampled according to the behavior policy.

The book in this section 7.4 is a bit confusing, because it goes straight from on-policy to off-policy with covariates, skipping over the recursive expressions of the returns for off-policy without covariates.

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