AI RESEARCH

Boosting deep Reinforcement Learning using pretraining with Logical Options

arXiv CS.AI

ArXi:2603.06565v1 Announce Type: new Deep reinforcement learning agents are often misaligned, as they over-exploit early reward signals. Recently, several symbolic approaches have addressed these challenges by encoding sparse objectives along with aligned plans. However, purely symbolic architectures are complex to scale and difficult to apply to continuous settings. Hence, we propose a hybrid approach, inspired by humans' ability to acquire new skills.