Train on Small, Play the Large: Scaling Up Board Games with
Por um escritor misterioso
Last updated 05 junho 2024
Playing board games is considered a major challenge for both humans and AI researchers. Because some complicated board games are quite hard to learn, humans usually begin with playing on smaller boards and incrementally advance to master larger board strategies. Most neural network frameworks that are currently tasked with playing board games neither perform such incremental learning nor possess capabilities to automatically scale up. In this work, we look at the board as a graph and combine a graph neural network architecture inside the AlphaZero framework, along with some other innovative improvements. Our ScalableAlphaZero is capable of learning to play incrementally on small boards, and advancing to play on large ones. Our model can be trained quickly to play different challenging board games on multiple board sizes, without using any domain knowledge. We demonstrate the effectiveness of ScalableAlphaZero and show, for example, that by training it for only three days on small Othello boards, it can defeat the AlphaZero model on a large board, which was trained to play the large board for 30 days.
51 best employee team building games for productivity
8 best Lego sets for every age, according to experts
The 12 Best Beginner Board Games for Adults of 2023
Train on Small, Play the Large: Scaling Up Board Games with AlphaZero and GNN
PDF] Train on Small, Play the Large: Scaling Up Board Games with AlphaZero and GNN
The 4 Best Strategy Board Games of 2023
Indonesia's China-backed high-speed train sparks concerns of debt trap
【Enliven Your Winter Holiday Scene】There's no better time of the year for a train than Christmas, CubicFun 3d Christmas train model set will help you
3D Puzzles for Adults Kids LED Christmas Train Sets for Under Christmas Tree, Musical Steam Santa Express Christmas Decorations with Lights, Christmas
Train on Small, Play the Large: Scaling Up Board Games with AlphaZero and GNN – arXiv Vanity
Train on Small, Play the Large: Scaling Up Board Games with AlphaZero and GNN – arXiv Vanity
Recomendado para você
-
Alpha Zero and Monte Carlo Tree Search05 junho 2024
-
Turnover Chess Variant05 junho 2024
-
gumbel-alphazero · GitHub Topics · GitHub05 junho 2024
-
GitHub - Kruszylo/gomoku-bot: A replica of the AlphaZero05 junho 2024
-
GitHub - junxiaosong/AlphaZero_Gomoku: An implementation of the05 junho 2024
-
Time manager Alphazero - Leela Chess Zero05 junho 2024
-
GitHub - alphazero/Go-Redis: Google Go Client and Connectors for Redis05 junho 2024
-
动手实现并行版AlphaZero · hijkzzz/alpha-zero-gomoku Wiki · GitHub05 junho 2024
-
Building on AlphaZero with Julia, Jonathan Laurent05 junho 2024
-
AlphaZero05 junho 2024
você pode gostar
-
Ficha de treino de academia: como montar, dicas e modelos05 junho 2024
-
John Doe (John Doe)/Gallery, Villains Wiki, Fandom in 202305 junho 2024
-
gamemaker · GitHub Topics · GitHub05 junho 2024
-
ip man 4 All Aircraft Report!05 junho 2024
-
Skater XL Coming to Steam Early Access on December 19, Teaser05 junho 2024
-
Rating analytics: True chess grinders of 201905 junho 2024
-
Dragon's Dogma: Dark Arisen on Steam05 junho 2024
-
Joyeux Noël : Diane Kruger, Benno Fürmann, Guillaume05 junho 2024
-
chainsaw man dublado saco|TikTok Search05 junho 2024
-
Forza Motorsport 4 will always be the greatest Forza ever. (In my opinion) : r/forza05 junho 2024