Abstract
We derive an equation for temporal difference learning from statistical principles. Specifically, we start with the variational principle and then bootstrap to produce an updating rule for discounted state value estimates. The resulting equation is similar to the standard equation for temporal difference learning with eligibility traces, so called TD(λ), however it lacks the parameter a that specifies the learning rate. In the place of this free parameter there is now an equation for the learning rate that is specific to each state transition. We experimentally test this new learning rule against TD(λ) and find that it offers superior performance in various settings. Finally, we make some preliminary investigations into how to extend our new temporal difference algorithm to reinforcement learning. To do this we combine our update equation with both Watkins' Q(λ) and Sarsa(λ) and find that it again offers superior performance without a learning rate parameter.
Original language | English |
---|---|
Title of host publication | Advances in Neural Information Processing Systems 20: Proceedings of the 2007 Conference |
Editors | Platt, John C., Koller, Daphne, Singer, Yoram and Roweis, Sam |
Place of Publication | Vancouver Canada |
Publisher | MIT Press |
Pages | 705-712 |
Edition | Peer Reviewed |
ISBN (Print) | 9781605603520 |
Publication status | Published - 2009 |
Event | Conference on Advances in Neural Information Processing Systems (NIPS 2007) - Vancouver Canada Duration: 1 Jan 2009 → … http://books.nips.cc/nips20.html |
Conference
Conference | Conference on Advances in Neural Information Processing Systems (NIPS 2007) |
---|---|
Period | 1/01/09 → … |
Other | December 3-6 2007 |
Internet address |