Organizing Experience: A Deeper Look at Replay Mechanisms for Sample-based Planning in Continuous State Domains
June 12, 2018 Β· Declared Dead Β· π International Joint Conference on Artificial Intelligence
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Authors
Yangchen Pan, Muhammad Zaheer, Adam White, Andrew Patterson, Martha White
arXiv ID
1806.04624
Category
cs.AI: Artificial Intelligence
Citations
49
Venue
International Joint Conference on Artificial Intelligence
Last Checked
3 months ago
Abstract
Model-based strategies for control are critical to obtain sample efficient learning. Dyna is a planning paradigm that naturally interleaves learning and planning, by simulating one-step experience to update the action-value function. This elegant planning strategy has been mostly explored in the tabular setting. The aim of this paper is to revisit sample-based planning, in stochastic and continuous domains with learned models. We first highlight the flexibility afforded by a model over Experience Replay (ER). Replay-based methods can be seen as stochastic planning methods that repeatedly sample from a buffer of recent agent-environment interactions and perform updates to improve data efficiency. We show that a model, as opposed to a replay buffer, is particularly useful for specifying which states to sample from during planning, such as predecessor states that propagate information in reverse from a state more quickly. We introduce a semi-parametric model learning approach, called Reweighted Experience Models (REMs), that makes it simple to sample next states or predecessors. We demonstrate that REM-Dyna exhibits similar advantages over replay-based methods in learning in continuous state problems, and that the performance gap grows when moving to stochastic domains, of increasing size.
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