{"id":60117,"date":"2021-05-12T23:44:23","date_gmt":"2021-05-12T14:44:23","guid":{"rendered":"https:\/\/smilegate.ai\/?p=60117"},"modified":"2021-05-14T10:22:45","modified_gmt":"2021-05-14T01:22:45","slug":"continual-reinforcement-learning","status":"publish","type":"post","link":"https:\/\/smilegate.ai\/en\/2021\/05\/12\/continual-reinforcement-learning\/","title":{"rendered":"Continual Reinforcement Learning"},"content":{"rendered":"

[Prior Research Team Lee Jung-woo]<\/p>\n\n\n\n

Recent reinforcement learning has shown that AI agents can dominate human performance in a variety of tasks. However, the unlearned AI agent has the disadvantage that it requires a lot of time to learn and the generalization performance for various tasks is poor compared to humans. On the other hand, humans, unlike AI agents, adapt well to new situations and have the ability to continue learning new knowledge. Continual Learning was born by referring to the ability of these people. In this article Towards Continual Reinforcement Learning: A Review and Perspectives<\/a> Through (Khetarpal et al., 2020), I would like to introduce Continual Reinforcement Learning that fits well with the real world situation.<\/p>\n\n\n\n