AI RESEARCH

RelAgent: LLM Agents as Data Scientists for Relational Learning

arXiv CS.LG

ArXi:2605.07840v1 Announce Type: new Relational learning is a challenging problem that has motivated a wide range of approaches, including graph-based models (e.g., graph neural networks, graph transformers), tabular methods (e.g., tabular foundation models), and sequence-based approaches (e.g., large language models), each with its own advantages and limitations. We propose RelAgent, an LLM-based autonomous data scientist for relational learning, which operates in two phases.