JSAI2022

Presentation information

Organized Session

Organized Session » OS-15

[3G4-OS-15b] 移動系列のデータマイニングと機械学習(2/2)

Thu. Jun 16, 2022 2:50 PM - 5:10 PM Room G (Room G)

オーガナイザ:藤井 慶輔(名古屋大学)[現地]、竹内 孝(京都大学)、沖 拓弥(東京工業大学)、西田 遼(東北大学)、田部井 靖生(理化学研究所)、前川 卓也(大阪大学)

3:30 PM - 3:50 PM

[3G4-OS-15b-03] Diversity of behavioral strategy in cooperative hunting using multi-agent deep reinforcement learning

〇Kazushi Tsutsui1, Kazuya Takeda1, Keisuke Fujii1,2,3 (1. Nagoya University, 2. RIKEN, 3. PRESTO)

Keywords:Multi-agent, Deep reinforcement learning, Cooperation

Cooperative hunting is a widespread form of cooperation in nature, and it is known that the level of organization of this predation varies among species. However, how cooperative forms of predation have evolved and been maintained is not well understood. In this study, we addressed this issue using a multi-agent simulation based on deep reinforcement learning. We examined changes in behavioral strategies when changing factors that have been suggested to be associated with predation forms by previous observations in nature, and found that the highest level of organization with role division among individuals was emerged under the combined conditions of two factors: difficulty of prey capture, and food (reward) sharing. These results suggest that sophisticated predation forms, which have been thought to require high cognition, can evolve from relatively simple cognitive and learning mechanisms, and emphasize the close link between the predation form and the environment where the organism lives.

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