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Learning to Play Two-Player Perfect-Information Games without Knowledge

Learning to Play Two-Player Perfect-Information Games without Knowledge

3 August 2020
Quentin Cohen-Solal
    OffRL
ArXivPDFHTML

Papers citing "Learning to Play Two-Player Perfect-Information Games without Knowledge"

7 / 7 papers shown
Title
On some improvements to Unbounded Minimax
On some improvements to Unbounded Minimax
Quentin Cohen-Solal
Tristan Cazenave
140
0
0
07 May 2025
Deep Reinforcement Learning for 5*5 Multiplayer Go
Deep Reinforcement Learning for 5*5 Multiplayer Go
Brahim Driss
Jérôme Arjonilla
Hui Wang
Abdallah Saffidine
Tristan Cazenave
118
0
0
23 May 2024
Learning to Play Stochastic Two-player Perfect-Information Games without
  Knowledge
Learning to Play Stochastic Two-player Perfect-Information Games without Knowledge
Quentin Cohen-Solal
Tristan Cazenave
22
0
0
08 Feb 2023
Spatial State-Action Features for General Games
Spatial State-Action Features for General Games
Dennis J. N. J. Soemers
Éric Piette
Matthew Stephenson
C. Browne
47
4
0
17 Jan 2022
Assessing Policy, Loss and Planning Combinations in Reinforcement
  Learning using a New Modular Architecture
Assessing Policy, Loss and Planning Combinations in Reinforcement Learning using a New Modular Architecture
Tiago Gaspar Oliveira
Arlindo L. Oliveira
17
0
0
08 Jan 2022
Completeness of Unbounded Best-First Game Algorithms
Completeness of Unbounded Best-First Game Algorithms
Quentin Cohen-Solal
36
5
0
11 Sep 2021
Minimax Strikes Back
Minimax Strikes Back
Quentin Cohen-Solal
Tristan Cazenave
23
13
0
19 Dec 2020
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