A Unified Graph Language Model for Multi-Domain Multi-Task Graph Alignment Instruction Tuning
Haibo Chen, Xin Wang, Jiaheng Chao, Ling Feng, Wenwu Zhu

TL;DR
This paper introduces UniGraphLM, a unified graph language model that integrates multi-domain, multi-task GNN encoders with LLMs to improve cross-domain graph understanding and alignment.
Contribution
It proposes a novel framework for aligning GNN-encoded graph representations with LLMs across multiple domains and tasks, addressing generalization and alignment challenges.
Findings
Unified framework enhances multi-domain graph alignment.
Adaptive alignment strategy improves semantic consistency.
Demonstrates better generalization across diverse graph data.
Abstract
Leveraging Graph Neural Networks (GNNs) as graph encoders and aligning the resulting representations with Large Language Models (LLMs) through alignment instruction tuning has become a mainstream paradigm for constructing Graph Language Models (GLMs), combining the generalization ability of LLMs with the structural modeling capacity of GNNs. However, existing GLMs that adopt GNNs as graph encoders largely overlook the problem of aligning GNN-encoded representations across domains and tasks with the LLM token space to obtain unified graph tokens, thereby limiting their ability to generalize across diverse graph data. To bridge this gap, we aim to incorporate a multi-domain, multi-task GNN encoder into GLMs and align its representations with LLMs to enable multi-domain, multi-task graph alignment instruction tuning. This alignment problem remains underexplored and poses two key…
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