Context-Aware Chatbot Framework with Mobile Sensing
Published:Dec 26, 2025 14:04
•1 min read
•ArXiv
Analysis
This paper addresses a key limitation of current LLM-based chatbots: their lack of real-world context. By integrating mobile sensing data, the framework aims to create more personalized and relevant conversations. This is significant because it moves beyond simple text input and taps into the user's actual behavior and environment, potentially leading to more effective and helpful conversational assistants, especially in areas like digital health.
Key Takeaways
- •Integrates mobile sensing data (user behavior and environment) to provide context.
- •Translates sensor data into natural language prompts for the LLM.
- •Uses a structured prompting system for personalized dialogue.
- •Focuses on digital health and personalized interaction as potential applications.
Reference
“The paper proposes a context-sensitive conversational assistant framework grounded in mobile sensing data.”