Stable opponent shaping in differentiable games
A growing number of learning methods are actually differentiable games whose players optimise multiple, interdependent objectives in parallel – from GANs and intrinsic curiosity to multi-agent RL. Opponent shaping is a powerful approach to improve learning dynamics in these games, accounting for pla...
Hauptverfasser: | Letcher, A, Foerster, J, Balduzzi, D, Rocktaschel, T, Whiteson, S |
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Format: | Conference item |
Veröffentlicht: |
OpenReview
2019
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