Generalized Emphatic Temporal Difference Learning: Bias-Variance Analysis
Abstract
We consider the off-policy evaluation problem in Markov decision processes with function approximation. We propose a generalization of the recently introduced \emph{emphatic temporal differences} (ETD) algorithm \citep{SuttonMW15}, which encompasses the original ETD(), as well as several other off-policy evaluation algorithms as special cases. We call this framework \ETD, where our introduced parameter controls the decay rate of an importance-sampling term. We study conditions under which the projected fixed-point equation underlying \ETD\ involves a contraction operator, allowing us to present the first asymptotic error bounds (bias) for \ETD. Our results show that the original ETD algorithm always involves a contraction operator, and its bias is bounded. Moreover, by controlling , our proposed generalization allows trading-off bias for variance reduction, thereby achieving a lower total error.
Cite
@article{arxiv.1509.05172,
title = {Generalized Emphatic Temporal Difference Learning: Bias-Variance Analysis},
author = {Assaf Hallak and Aviv Tamar and Remi Munos and Shie Mannor},
journal= {arXiv preprint arXiv:1509.05172},
year = {2015}
}
Comments
arXiv admin note: text overlap with arXiv:1508.03411