When LLMs meet open-world graph learning: a new perspective for unlabeled data uncertainty
By: Yanzhe Wen , Xunkai Li , Qi Zhang and more
Potential Business Impact:
Helps computers learn from messy, incomplete data.
Recently, large language models (LLMs) have significantly advanced text-attributed graph (TAG) learning. However, existing methods inadequately handle data uncertainty in open-world scenarios, especially concerning limited labeling and unknown-class nodes. Prior solutions typically rely on isolated semantic or structural approaches for unknown-class rejection, lacking effective annotation pipelines. To address these limitations, we propose Open-world Graph Assistant (OGA), an LLM-based framework that combines adaptive label traceability, which integrates semantics and topology for unknown-class rejection, and a graph label annotator to enable model updates using newly annotated nodes. Comprehensive experiments demonstrate OGA's effectiveness and practicality.
Similar Papers
When LLM Agents Meet Graph Optimization: An Automated Data Quality Improvement Approach
Machine Learning (CS)
Fixes messy data for smarter computer graphs.
LLM-Guided Agentic Object Detection for Open-World Understanding
CV and Pattern Recognition
Lets computers find and name new things.
Graph Synthetic Out-of-Distribution Exposure with Large Language Models
Machine Learning (CS)
Finds fake data in computer networks.