StretchBot: A Neuro-Symbolic Framework for Adaptive Guidance with Assistive Robots

arXiv cs.RO / 4/2/2026

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Key Points

  • StretchBot is introduced as a hybrid neuro-symbolic robotic coaching framework that provides adaptive, context-aware guidance for assistive stretching and rehabilitation routines.
  • The system fuses multimodal perception with knowledge-graph-grounded large-language-model reasoning to adjust guidance during short sessions while preserving a structured routine.
  • An exploratory pilot study with three participants compares scripted vs. adaptive guidance, finding that adaptive guidance scored higher on perceived adaptability and contextual relevance.
  • Scripted guidance remained competitive for smoothness and predictability, suggesting a trade-off between adaptability and consistency in embodied interactions.
  • The authors position the results as preliminary evidence that structured knowledge can ground LLM-based adaptation, while calling for larger longitudinal studies to assess robustness, generalizability, and long-term user experience.

Abstract

Assistive robots have growing potential to support physical wellbeing in home and healthcare settings, for example, by guiding users through stretching or rehabilitation routines. However, existing systems remain largely scripted, which limits their ability to adapt to user state, environmental context, and interaction dynamics. In this work, we present StretchBot, a hybrid neuro-symbolic robotic coach for adaptive assistive guidance. The system combines multimodal perception with knowledge-graph-grounded large language model reasoning to support context-aware adjustments during short stretching sessions while maintaining a structured routine. To complement the system description, we report an exploratory pilot comparison between scripted and adaptive guidance with three participants. The pilot findings suggest that the adaptive condition improved perceived adaptability and contextual relevance, while scripted guidance remained competitive in smoothness and predictability. These results provide preliminary evidence that structured actionable knowledge can help ground language-model-based adaptation in embodied assistive interaction, while also highlighting the need for larger, longitudinal studies to evaluate robustness, generalizability, and long-term user experience.