English

On Convergence of Emphatic Temporal-Difference Learning

Machine Learning 2017-12-29 v3

Abstract

We consider emphatic temporal-difference learning algorithms for policy evaluation in discounted Markov decision processes with finite spaces. Such algorithms were recently proposed by Sutton, Mahmood, and White (2015) as an improved solution to the problem of divergence of off-policy temporal-difference learning with linear function approximation. We present in this paper the first convergence proofs for two emphatic algorithms, ETD(λ\lambda) and ELSTD(λ\lambda). We prove, under general off-policy conditions, the convergence in L1L^1 for ELSTD(λ\lambda) iterates, and the almost sure convergence of the approximate value functions calculated by both algorithms using a single infinitely long trajectory. Our analysis involves new techniques with applications beyond emphatic algorithms leading, for example, to the first proof that standard TD(λ\lambda) also converges under off-policy training for λ\lambda sufficiently large.

Keywords

Cite

@article{arxiv.1506.02582,
  title  = {On Convergence of Emphatic Temporal-Difference Learning},
  author = {Huizhen Yu},
  journal= {arXiv preprint arXiv:1506.02582},
  year   = {2017}
}

Comments

A minor correction is made (see page 1 for details). 45 pages. A shorter 28-page article based on the first version appeared at the 28th Annual Conference on Learning Theory (COLT), 2015

R2 v1 2026-06-22T09:49:25.829Z