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arxiv: 1805.10005 · v1 · pith:FAD2J6I3new · submitted 2018-05-25 · 💻 cs.LG · cs.AI· stat.ML

Finite Sample Analysis of LSTD with Random Projections and Eligibility Traces

classification 💻 cs.LG cs.AIstat.ML
keywords lstdlambdaeligibilityerrorrandomtracesanalysisapproximation
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Policy evaluation with linear function approximation is an important problem in reinforcement learning. When facing high-dimensional feature spaces, such a problem becomes extremely hard considering the computation efficiency and quality of approximations. We propose a new algorithm, LSTD($\lambda$)-RP, which leverages random projection techniques and takes eligibility traces into consideration to tackle the above two challenges. We carry out theoretical analysis of LSTD($\lambda$)-RP, and provide meaningful upper bounds of the estimation error, approximation error and total generalization error. These results demonstrate that LSTD($\lambda$)-RP can benefit from random projection and eligibility traces strategies, and LSTD($\lambda$)-RP can achieve better performances than prior LSTD-RP and LSTD($\lambda$) algorithms.

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