SEAL: A Self-Evolving Agent for Conversational Question Answering on Knowledge Graphs
Published:Dec 4, 2025 14:52
•1 min read
•ArXiv
Analysis
The research paper introduces a novel agent-based approach, SEAL, for conversational question answering that leverages self-evolution within knowledge graphs. The focus on self-evolving agentic learning suggests an effort to move beyond static models and improve adaptability.
Key Takeaways
- •SEAL represents a shift towards dynamic, self-improving AI models.
- •The use of agentic learning implies a potential for enhanced reasoning capabilities.
- •The application of this model is specifically tailored for conversational question answering.
Reference
“The paper focuses on conversational question answering over knowledge graphs.”