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Rate of Convergence and Error Bounds for LSTD(λλλ)

13 May 2014
Manel Tagorti
B. Scherrer
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Abstract

We consider LSTD(λ\lambdaλ), the least-squares temporal-difference algorithm with eligibility traces algorithm proposed by Boyan (2002). It computes a linear approximation of the value function of a fixed policy in a large Markov Decision Process. Under a β\betaβ-mixing assumption, we derive, for any value of λ∈(0,1)\lambda \in (0,1)λ∈(0,1), a high-probability estimate of the rate of convergence of this algorithm to its limit. We deduce a high-probability bound on the error of this algorithm, that extends (and slightly improves) that derived by Lazaric et al. (2012) in the specific case where λ=0\lambda=0λ=0. In particular, our analysis sheds some light on the choice of λ\lambdaλ with respect to the quality of the chosen linear space and the number of samples, that complies with simulations.

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