JSAI2023

Presentation information

Poster Session

General Session » Poster session

[4Xin1] Poster session 2

Fri. Jun 9, 2023 9:00 AM - 10:40 AM Room X (Exhibition hall B)

[4Xin1-28] Analysis of Equilibrium Strategies in a New Number-Guessing Game with Reward and Penalty

〇Riku Yoshioka1, Yuko Sakurai1, Satoshi Oyama2, Masato Shinoda3 (1.Nagoya Institute of technology, 2.Hokkaido University, 3.Nara Women’s University)

Keywords:Multi-agent reinforcement learning, Min-Max Q learning, Game theory

We propose a new variant of number-guessing games with penalties for failure and consider the equilibrium strategies in the game. In the proposed game, the codemaker selects a number from 1 to n as her private information then the codebreaker guesses the number. The codebreaker can receive the number as her reward when she guesses correctly, but she must pay a penalty for each failed guess. We formalize the game as a linear programming problem to obtain the codemaker's Min-Max strategy and the codebreaker's Max-Min strategy. The strategies are also explored by using Minimax Q Learning. We compare the computational cost of the two approaches in obtaining the equilibrium strategies.

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