Repository logo
Research Data
Publications
Projects
Persons
Organizations
English
Français
Log In(current)
  1. Home
  2. Publications
  3. Article de recherche (journal article)
  4. Near-Optimal Online Egalitarian learning in General Sum Repeated Matrix Games

Near-Optimal Online Egalitarian learning in General Sum Repeated Matrix Games

Author(s)
Aristide Tossou
Dimitrakakis, Christos  
Chaire de science des données  
Jaroslaw Rzepecki
Katja Hofmann
Date issued
June 4, 2019
In
Computing Research Repository (CoRR)
Vol
1906.01609
Subjects
cs.LG cs.GT
Abstract
We study two-player general sum repeated finite games where the rewards of each player are generated from an unknown distribution. Our aim is to find the egalitarian bargaining solution (EBS) for the repeated game, which can lead to much higher rewards than the maximin value of both players. Our most important contribution is the derivation of an algorithm that achieves simultaneously, for both players, a high-probability regret bound of order O(lnT−−−√3⋅T2/3) after any T rounds of play. We demonstrate that our upper bound is nearly optimal by proving a lower bound of Ω(T2/3) for any algorithm.
Publication type
journal article
Identifiers
https://libra.unine.ch/handle/20.500.14713/64468
DOI
10.48550/arXiv.1906.01609
-
1906.01609v1
-
https://libra.unine.ch/handle/123456789/30986
File(s)
Loading...
Thumbnail Image
Download
Name

1906.01609.pdf

Type

Main Article

Size

349.17 KB

Format

Adobe PDF

Checksum

(MD5):2f3f41663a29f59e5f79f81bca0c06ed

Université de Neuchâtel logo

Service information scientifique & bibliothèques

Rue Emile-Argand 11

2000 Neuchâtel

contact.libra@unine.ch

Service informatique et télématique

Rue Emile-Argand 11

Bâtiment B, rez-de-chaussée

Powered by DSpace-CRIS

v2.0.0

© 2025 Université de Neuchâtel

Portal overviewUser guideOpen Access strategyOpen Access directive Research at UniNE Open Access ORCIDWhat's new