Learning Not to Regret
DOI:
https://doi.org/10.1609/aaai.v38i14.29443Keywords:
ML: Online Learning & BanditsAbstract
The literature on game-theoretic equilibrium finding predominantly focuses on single games or their repeated play. Nevertheless, numerous real-world scenarios feature playing a game sampled from a distribution of similar, but not identical games, such as playing poker with different public cards or trading correlated assets on the stock market. As these similar games feature similar equilibra, we investigate a way to accelerate equilibrium finding on such a distribution. We present a novel ``learning not to regret'' framework, enabling us to meta-learn a regret minimizer tailored to a specific distribution. Our key contribution, Neural Predictive Regret Matching, is uniquely meta-learned to converge rapidly for the chosen distribution of games, while having regret minimization guarantees on any game. We validated our algorithms' faster convergence on a distribution of river poker games. Our experiments show that the meta-learned algorithms outpace their non-meta-learned counterparts, achieving more than tenfold improvements.Downloads
Published
2024-03-24
How to Cite
Sychrovský, D., Šustr, M., Davoodi, E., Bowling, M., Lanctot, M., & Schmid, M. (2024). Learning Not to Regret. Proceedings of the AAAI Conference on Artificial Intelligence, 38(14), 15202-15210. https://doi.org/10.1609/aaai.v38i14.29443
Issue
Section
AAAI Technical Track on Machine Learning V