UniGTE: Unified Graph–Text Encoding for Zero-Shot Generalization across Graph Tasks and Domains
–Neural Information Processing Systems
Generalizing to unseen graph tasks without task-specific supervision is challenging: conventional graph neural networks are typically tied to a fixed label space, while large language models (LLMs) struggle to capture graph structure. We introduce UniGTE, an instruction-tuned encoder-decoder framework that unifies structural and semantic reasoning. The encoder augments a pretrained autoregressive LLM with learnable alignment tokens and a structure-aware graph-text attention mechanism, enabling it to attend jointly to a tokenized graph and a natural-language task prompt while remaining permutation-invariant to node order.
Neural Information Processing Systems
Jun-13-2026, 02:36:48 GMT
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