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An Instance-Dependent Analysis for the Cooperative Multi-Player
  Multi-Armed Bandit
v1v2 (latest)

An Instance-Dependent Analysis for the Cooperative Multi-Player Multi-Armed Bandit

8 November 2021
Aldo Pacchiano
Peter L. Bartlett
Michael I. Jordan
ArXiv (abs)PDFHTML

Papers citing "An Instance-Dependent Analysis for the Cooperative Multi-Player Multi-Armed Bandit"

13 / 13 papers shown
Title
The Pareto Frontier of Instance-Dependent Guarantees in Multi-Player
  Multi-Armed Bandits with no Communication
The Pareto Frontier of Instance-Dependent Guarantees in Multi-Player Multi-Armed Bandits with no Communication
Allen Liu
Mark Sellke
72
2
0
19 Feb 2022
Towards Optimal Algorithms for Multi-Player Bandits without Collision
  Sensing Information
Towards Optimal Algorithms for Multi-Player Bandits without Collision Sensing Information
Wei Huang
Richard Combes
Cindy Trinh
33
13
0
24 Mar 2021
Cooperative and Stochastic Multi-Player Multi-Armed Bandit: Optimal
  Regret With Neither Communication Nor Collisions
Cooperative and Stochastic Multi-Player Multi-Armed Bandit: Optimal Regret With Neither Communication Nor Collisions
Sébastien Bubeck
Thomas Budzinski
Mark Sellke
47
18
0
08 Nov 2020
Decentralized Multi-player Multi-armed Bandits with No Collision
  Information
Decentralized Multi-player Multi-armed Bandits with No Collision Information
Chengshuai Shi
Wei Xiong
Cong Shen
Jing Yang
73
36
0
29 Feb 2020
Coordination without communication: optimal regret in two players
  multi-armed bandits
Coordination without communication: optimal regret in two players multi-armed bandits
Sébastien Bubeck
Thomas Budzinski
80
24
0
14 Feb 2020
Effective Diversity in Population Based Reinforcement Learning
Effective Diversity in Population Based Reinforcement Learning
Jack Parker-Holder
Aldo Pacchiano
K. Choromanski
Stephen J. Roberts
106
164
0
03 Feb 2020
Non-Stochastic Multi-Player Multi-Armed Bandits: Optimal Rate With
  Collision Information, Sublinear Without
Non-Stochastic Multi-Player Multi-Armed Bandits: Optimal Rate With Collision Information, Sublinear Without
Sébastien Bubeck
Yuanzhi Li
Yuval Peres
Mark Sellke
127
46
0
28 Apr 2019
Multi-Player Bandits: The Adversarial Case
Multi-Player Bandits: The Adversarial Case
Pragnya Alatur
Kfir Y. Levy
Andreas Krause
AAML
55
37
0
21 Feb 2019
SIC-MMAB: Synchronisation Involves Communication in Multiplayer
  Multi-Armed Bandits
SIC-MMAB: Synchronisation Involves Communication in Multiplayer Multi-Armed Bandits
Etienne Boursier
Vianney Perchet
129
103
0
21 Sep 2018
Multiplayer bandits without observing collision information
Multiplayer bandits without observing collision information
Gabor Lugosi
Abbas Mehrabian
40
36
0
25 Aug 2018
Concurrent bandits and cognitive radio networks
Concurrent bandits and cognitive radio networks
Orly Avner
Shie Mannor
60
94
0
22 Apr 2014
Distributed Algorithms for Learning and Cognitive Medium Access with
  Logarithmic Regret
Distributed Algorithms for Learning and Cognitive Medium Access with Logarithmic Regret
Anima Anandkumar
Nithin Michael
A. Tang
A. Swami
127
349
0
08 Jun 2010
Distributed Learning in Multi-Armed Bandit with Multiple Players
Distributed Learning in Multi-Armed Bandit with Multiple Players
Keqin Liu
Qing Zhao
121
442
0
12 Oct 2009
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