システム制御情報学会 研究発表講演会講演論文集
第47回システム制御情報学会研究発表講演会
会議情報
長期記憶を有するニューラルネットによる動的環境への適応
津守 研二小澤 誠一阿部 重夫
著者情報
会議録・要旨集 フリー

p. 5506

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抄録
When the environment is dynamically changed for agents, knowledge acquired from an environment might be useless in the future environments. Therefore, agents should not only acquire new knowledge but also modify or delete old knowledge. However, this modification and deletion are not always efficient in learning. Because the knowledge once acquired in the past can be useful again in the future when the same environment reappears. To learn efficiently in this situation, agents should have memory to store old knowledge. In this paper, we propose an agent architecture that consists of four modules: resource allocating network (RAN), long-term memory (LTM), association buffer (A-Buffer), and environmental change detector (ECD). To evaluate the adaptability in a class of dynamic environments, we apply this model to a simple problem that some target functions to be approximated are changed in turn.
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© 2003 システム制御情報学会
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