Learning in Multi-Memory Games Triggers Complex Dynamics Diverging from Nash Equilibrium

02/02/2023
by   Yuma Fujimoto, et al.
0

Repeated games consider a situation where multiple agents are motivated by their independent rewards throughout learning. In general, the dynamics of their learning become complex. Especially when their rewards compete with each other like zero-sum games, the dynamics often do not converge to their optimum, i.e., Nash equilibrium. To tackle such complexity, many studies have understood various learning algorithms as dynamical systems and discovered qualitative insights among the algorithms. However, such studies have yet to handle multi-memory games (where agents can memorize actions they played in the past and choose their actions based on their memories), even though memorization plays a pivotal role in artificial intelligence and interpersonal relationship. This study extends two major learning algorithms in games, i.e., replicator dynamics and gradient ascent, into multi-memory games. Then, we prove their dynamics are identical. Furthermore, theoretically and experimentally, we clarify that the learning dynamics diverge from the Nash equilibrium in multi-memory zero-sum games and reach heteroclinic cycles (sojourn longer around the boundary of the strategy space), providing a fundamental advance in learning in games.

READ FULL TEXT
research
05/23/2023

Memory Asymmetry Creates Heteroclinic Orbits to Nash Equilibrium in Learning in Zero-Sum Games

Learning in games considers how multiple agents maximize their own rewar...
research
07/06/2023

A Robust Characterization of Nash Equilibrium

We give a robust characterization of Nash equilibrium by postulating coh...
research
08/24/2023

SC-PSRO: A Unified Strategy Learning Method for Normal-form Games

Solving Nash equilibrium is the key challenge in normal-form games with ...
research
01/26/2022

Unpredictable dynamics in congestion games: memory loss can prevent chaos

We study the dynamics of simple congestion games with two resources wher...
research
03/05/2021

Learning in Matrix Games can be Arbitrarily Complex

A growing number of machine learning architectures, such as Generative A...
research
10/03/2019

From Darwin to Poincaré and von Neumann: Recurrence and Cycles in Evolutionary and Algorithmic Game Theory

Replicator dynamics, the continuous-time analogue of Multiplicative Weig...
research
05/28/2020

Chaos, Extremism and Optimism: Volume Analysis of Learning in Games

We present volume analyses of Multiplicative Weights Updates (MWU) and O...

Please sign up or login with your details

Forgot password? Click here to reset