핵심 개념
AutoGuide bridges knowledge gaps in pre-trained LLMs by extracting state-aware guidelines from offline experiences, enhancing decision-making.
초록
AutoGuide introduces a framework to extract state-aware guidelines from offline data, improving LLM agents' decision-making. By leveraging implicit knowledge in offline experiences, AutoGuide provides concise natural language guidelines that enhance an agent's performance. The method outperforms competitive baselines in sequential decision-making benchmarks by providing relevant guidelines at test time based on the current state.
통계
AutoGuide outperforms competitive LLM-based baselines by a large margin in sequential decision-making benchmarks.
AutoGuide achieves the highest success rates compared to competitive baselines in challenging sequential decision-making benchmark environments.
AutoGuide generates state-aware guidelines in concise natural language statements, efficiently compressing knowledge in offline data.