JSAI2023

Presentation information

Organized Session

Organized Session » OS-21

[1G5-OS-21b] 世界モデルと知能

Tue. Jun 6, 2023 5:00 PM - 6:40 PM Room G (A4)

オーガナイザ:鈴木 雅大、岩澤 有祐、河野 慎、熊谷 亘、松嶋 達也、森 友亮、松尾 豊

6:00 PM - 6:20 PM

[1G5-OS-21b-04] Transferring World Model to unseen task

〇Yuya Fujisaki1, Keigo Minamida2, Shohei Hijikata3, Chika Sawano4, Wataru Kumagai5, Yutaka Matsuo5 (1. Japan Advanced Institute of Science and Technology, 2. Kindai University, 3. Nagoya Institute of Technology, 4. The Open University of Japan, 5. Graduate School of Engineering, the University of Tokyo)

Keywords:World Models

One of the model-based reinforcement learning techniques, known as the world model, predicts the environment's transitions resulting from the agent's actions. Using the world model is expected to improve sample efficiency and enable adaptation to unseen tasks. However, the world model is larger compared to other reinforcement learning models, which raises concerns about prolonged training and computational constraints when executing the model. To address these issues, we propose enhancing the world model's practicality by applying model compression and transfer learning. The objective of this study is to investigate the effect of these approaches on the world model's performance. Based on our results, we draw two conclusions: (1) the proposed method (model compression + transfer learning) has the potential to outperform learning only the target task without applying any model compression or transfer learning, and (2) the proposed method is robust to changes in hyperparameters.

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