Semantic Partial Grounding via LLMs
By: Giuseppe Canonaco, Alberto Pozanco, Daniel Borrajo
Published: 2026-02-26
View on arXiv →#cs.AI
Abstract
This research introduces a novel approach to semantic partial grounding, leveraging the capabilities of large language models to interpret and act upon incomplete or ambiguous instructions in dynamic environments. By enabling LLMs to build flexible, context-aware representations, the method significantly improves the robustness of AI systems in tasks requiring nuanced understanding and adaptive execution, making it highly applicable for robotics, human-AI interaction, and autonomous systems operating in uncertain conditions.