Learning not to Regret

03/02/2023
by   David Sychrovský, et al.
0

Regret minimization is a key component of many algorithms for finding Nash equilibria in imperfect-information games. To scale to games that cannot fit in memory, we can use search with value functions. However, calling the value functions repeatedly in search can be expensive. Therefore, it is desirable to minimize regret in the search tree as fast as possible. We propose to accelerate the regret minimization by introducing a general “learning not to regret” framework, where we meta-learn the regret minimizer. The resulting algorithm is guaranteed to minimize regret in arbitrary settings and is (meta)-learned to converge fast on a selected distribution of games. Our experiments show that meta-learned algorithms converge substantially faster than prior regret minimization algorithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/24/2019

Optimistic Regret Minimization for Extensive-Form Games via Dilated Distance-Generating Functions

We study the performance of optimistic regret-minimization algorithms fo...
research
06/27/2021

Last-iterate Convergence in Extensive-Form Games

Regret-based algorithms are highly efficient at finding approximate Nash...
research
06/28/2021

Evolutionary Dynamics and Φ-Regret Minimization in Games

Regret has been established as a foundational concept in online learning...
research
07/19/2022

Regret Minimization with Noisy Observations

In a typical optimization problem, the task is to pick one of a number o...
research
04/11/2022

Equilibrium Finding in Normal-Form Games Via Greedy Regret Minimization

We extend the classic regret minimization framework for approximating eq...
research
10/07/2019

Combining No-regret and Q-learning

Counterfactual Regret Minimization (CFR) has found success in settings l...
research
11/16/2021

Rank-Regret Minimization

Multi-criteria decision-making often requires finding a small representa...

Please sign up or login with your details

Forgot password? Click here to reset