Constructing Imperfect Recall Abstractions to Solve Large Extensive-Form Games

03/14/2018
by   Jiri Cermak, et al.
0

Extensive-form games are an important model of finite sequential interaction between players. The size of the extensive-form representation is, however, often prohibitive and it is the most common cause preventing deployment of game-theoretic solution concepts to real-world scenarios. The state-of-the-art approach to solve this issue is the information abstraction methodology. The majority of existing information abstraction approaches create abstracted games where players remember all their actions and all the information they obtained in the abstracted game -- a property denoted as a perfect recall. Remembering all the actions, however, causes the number of decision points of the player (and hence also the size of his strategy) to grow exponentially with the number of actions taken in the past. On the other hand, relaxing the perfect recall requirement (resulting in so-called imperfect recall abstractions) can significantly increase the computational complexity of solving the resulting abstracted game. In this work, we introduce two domain-independent algorithms FPIRA and CFR+IRA which are able to start with an arbitrary imperfect recall abstraction of the solved two-player zero-sum perfect recall extensive-form game. The algorithms simultaneously solve the abstracted game, detect the missing information causing problems and return it to the players. This process is repeated until provable convergence to the desired approximation of the Nash equilibrium of the original game. We experimentally demonstrate that even when the algorithms start with trivial coarse imperfect recall abstraction, they are capable of approximating Nash equilibrium of large games using abstraction with as little as 0.9

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/13/2018

Successful Nash Equilibrium Agent for a 3-Player Imperfect-Information Game

Creating strong agents for games with more than two players is a major o...
research
05/03/2012

No-Regret Learning in Extensive-Form Games with Imperfect Recall

Counterfactual Regret Minimization (CFR) is an efficient no-regret learn...
research
07/19/2021

Deposit schemes for incentivizing behavior in finite games of perfect information

We propose a model for finite games with deposit schemes and study how t...
research
07/11/2023

On Imperfect Recall in Multi-Agent Influence Diagrams

Multi-agent influence diagrams (MAIDs) are a popular game-theoretic mode...
research
05/28/2023

The Computational Complexity of Single-Player Imperfect-Recall Games

We study single-player extensive-form games with imperfect recall, such ...
research
05/08/2017

Safe and Nested Subgame Solving for Imperfect-Information Games

In imperfect-information games, the optimal strategy in a subgame may de...
research
06/11/2021

Model-Free Learning for Two-Player Zero-Sum Partially Observable Markov Games with Perfect Recall

We study the problem of learning a Nash equilibrium (NE) in an imperfect...

Please sign up or login with your details

Forgot password? Click here to reset