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Main Authors: Zhang, Zhihan, Li, Xunkai, Zuo, Yilong, Sun, Henan, Li, Zhenjun, Zhou, Bing, Li, Rong-Hua, Wang, Guoren
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.08952
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author Zhang, Zhihan
Li, Xunkai
Zuo, Yilong
Sun, Henan
Li, Zhenjun
Zhou, Bing
Li, Rong-Hua
Wang, Guoren
author_facet Zhang, Zhihan
Li, Xunkai
Zuo, Yilong
Sun, Henan
Li, Zhenjun
Zhou, Bing
Li, Rong-Hua
Wang, Guoren
contents Text-attributed graphs (TAGs) have become a key form of graph-structured data in modern data management and analytics, combining structural relationships with rich textual semantics for diverse applications. However, the effectiveness of analytical models, particularly graph neural networks (GNNs), is highly sensitive to data quality. Our empirical analysis shows that both conventional and LLM-enhanced GNNs degrade notably under textual, structural, and label imperfections, underscoring TAG quality as a key bottleneck for reliable analytics. Existing studies have explored data-level optimization for TAGs, but most focus on specific degradation types and target a single aspect like structure or label, lacking a systematic and comprehensive perspective on data quality improvement. To address this gap, we propose LAGA (Large Language and Graph Agent), a unified multi-agent framework for comprehensive TAG quality optimization. LAGA formulates graph quality control as a data-centric process, integrating detection, planning, action, and evaluation agents into an automated loop. It holistically enhances textual, structural, and label aspects through coordinated multi-modal optimization. Extensive experiments on 5 datasets and 16 baselines across 9 scenarios demonstrate the effectiveness, robustness and scalability of LAGA, confirming the importance of data-centric quality optimization for reliable TAG analytics.
format Preprint
id arxiv_https___arxiv_org_abs_2510_08952
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle When LLM Agents Meet Graph Optimization: An Automated Data Quality Improvement Approach
Zhang, Zhihan
Li, Xunkai
Zuo, Yilong
Sun, Henan
Li, Zhenjun
Zhou, Bing
Li, Rong-Hua
Wang, Guoren
Machine Learning
Text-attributed graphs (TAGs) have become a key form of graph-structured data in modern data management and analytics, combining structural relationships with rich textual semantics for diverse applications. However, the effectiveness of analytical models, particularly graph neural networks (GNNs), is highly sensitive to data quality. Our empirical analysis shows that both conventional and LLM-enhanced GNNs degrade notably under textual, structural, and label imperfections, underscoring TAG quality as a key bottleneck for reliable analytics. Existing studies have explored data-level optimization for TAGs, but most focus on specific degradation types and target a single aspect like structure or label, lacking a systematic and comprehensive perspective on data quality improvement. To address this gap, we propose LAGA (Large Language and Graph Agent), a unified multi-agent framework for comprehensive TAG quality optimization. LAGA formulates graph quality control as a data-centric process, integrating detection, planning, action, and evaluation agents into an automated loop. It holistically enhances textual, structural, and label aspects through coordinated multi-modal optimization. Extensive experiments on 5 datasets and 16 baselines across 9 scenarios demonstrate the effectiveness, robustness and scalability of LAGA, confirming the importance of data-centric quality optimization for reliable TAG analytics.
title When LLM Agents Meet Graph Optimization: An Automated Data Quality Improvement Approach
topic Machine Learning
url https://arxiv.org/abs/2510.08952