Feb. 7, 2024, 5:42 a.m. | Tsunehiko Tanaka Kenshi Abe Kaito Ariu Tetsuro Morimura Edgar Simo-Serra

cs.LG updates on arXiv.org arxiv.org

Traditional approaches in offline reinforcement learning aim to learn the optimal policy that maximizes the cumulative reward, also known as return. However, as applications broaden, it becomes increasingly crucial to train agents that not only maximize the returns, but align the actual return with a specified target return, giving control over the agent's performance. Decision Transformer (DT) optimizes a policy that generates actions conditioned on the target return through supervised learning and is equipped with a mechanism to control the …

agent agents aim applications control cs.lg decision giving learn offline performance policy reinforcement reinforcement learning returns s performance train transformer

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