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Maximin Action Identification: A New Bandit Framework for Games

Maximin Action Identification: A New Bandit Framework for Games

15 February 2016
Aurélien Garivier
E. Kaufmann
Wouter M. Koolen
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Papers citing "Maximin Action Identification: A New Bandit Framework for Games"

6 / 6 papers shown
Title
Sequential Learning of the Pareto Front for Multi-objective Bandits
Sequential Learning of the Pareto Front for Multi-objective Bandits
Elise Crépon
Aurélien Garivier
Wouter M. Koolen
52
1
0
29 Jan 2025
Learning Probably Approximately Correct Maximin Strategies in
  Simulation-Based Games with Infinite Strategy Spaces
Learning Probably Approximately Correct Maximin Strategies in Simulation-Based Games with Infinite Strategy Spaces
A. Marchesi
F. Trovò
N. Gatti
13
18
0
18 Nov 2019
Mixture Martingales Revisited with Applications to Sequential Tests and
  Confidence Intervals
Mixture Martingales Revisited with Applications to Sequential Tests and Confidence Intervals
E. Kaufmann
Wouter M. Koolen
31
117
0
28 Nov 2018
Sequential Test for the Lowest Mean: From Thompson to Murphy Sampling
Sequential Test for the Lowest Mean: From Thompson to Murphy Sampling
E. Kaufmann
Wouter M. Koolen
Aurélien Garivier
16
25
0
04 Jun 2018
Monte-Carlo Tree Search by Best Arm Identification
Monte-Carlo Tree Search by Best Arm Identification
E. Kaufmann
Wouter M. Koolen
16
37
0
09 Jun 2017
Nearly Optimal Sampling Algorithms for Combinatorial Pure Exploration
Nearly Optimal Sampling Algorithms for Combinatorial Pure Exploration
Lijie Chen
Anupam Gupta
Jiacheng Li
Mingda Qiao
Ruosong Wang
24
47
0
04 Jun 2017
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