Research Post
Importance sampling is an essential component of off-policy model-free reinforcement learning algorithms. However, its most effective variant, weighted importance sampling, does not carry over easily to function approximation and, because of this, it is not utilized in existing off-policy learning algorithms. In this paper, we take two steps toward bridging this gap. First, we show that weighted importance sampling can be viewed as a special case of weighting the error of individual training samples, and that this weighting has theoretical and empirical benefits similar to those of weighted importance sampling. Second, we show that these benefits extend to a new weighted-importance-sampling version of offpolicy LSTD(). We show empirically that our new WIS-LSTD() algorithm can result in much more rapid and reliable convergence than conventional off-policy LSTD() (Yu 2010, Bertsekas & Yu 2009).
Feb 1st 2023
Research Post
Read this research paper, co-authored by Fellow & Canada CIFAR AI Chair at Russ Greiner: Towards artificial intelligence-based learning health system for population-level mortality prediction using electrocardiograms
Jan 31st 2023
Research Post
Jan 20th 2023
Research Post
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