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Model Space Reasoning as Search in Feedback Space for Planning Domain Generation

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NOW LET US Article – Model Space Reasoning as Search in Feedback Space for Planning Domain Generation

Researchers investigate an agentic language model feedback framework to generate high-quality planning domains from natural language by leveraging symbolic feedback and heuristic search over model space.

Computer Science > Artificial Intelligence

Title:Model Space Reasoning as Search in Feedback Space for Planning Domain Generation

View PDF HTML (experimental)Abstract:The generation of planning domains from natural language descriptions remains an open problem even with the advent of large language models and reasoning models. Recent work suggests that while LLMs have the ability to assist with domain generation, they are still far from producing high quality domains that can be deployed in practice. To this end, we investigate the ability of an agentic language model feedback framework to generate planning domains from natural language descriptions that have been augmented with a minimal amount of symbolic information. In particular, we evaluate the quality of the generated domains under various forms of symbolic feedback, including landmarks, and output from the VAL plan validator. Using these feedback mechanisms, we experiment using heuristic search over model space to optimize domain quality.

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Source: arXiv cs.AI Recent

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