GRAIL: Graph Edit Distance and Node Alignment Using LLM-Generated Code
GRAIL: Graph Edit Distance and Node Alignment Using LLM-Generated Code
Graph Edit Distance (GED) is a widely used metric for measuring similarity between two graphs. Computing the optimal GED is NP-hard, leading to the development of various neural and non-neural heuristics. While neural methods have achieved improved approximation quality compared to non-neural approaches, they face significant challenges: (1) They require large amounts of ground truth data, which is itself NP-hard to compute. (2) They operate as black boxes, offering limited interpretability. (3) They lack cross-domain generalization, necessitating expensive retraining for each new dataset. We address these limitations with GRAIL, introducing a paradigm shift in this domain. Instead of training a neural model to predict GED, GRAIL employs a novel combination of large language models (LLMs) and automated prompt tuning to generate a program that is used to compute GED. This shift from predicting GED to generating programs imparts various advantages, including end-to-end interpretability and an autonomous self-evolutionary learning mechanism without ground-truth supervision. Extensive experiments on seven datasets confirm that GRAIL not only surpasses state-of-the-art GED approximation methods in prediction quality but also achieves robust cross-domain generalization across diverse graph distributions.
Samidha Verma、Arushi Goyal、Ananya Mathur、Ankit Anand、Sayan Ranu
信息科学、信息技术计算技术、计算机技术自然科学研究方法
Samidha Verma,Arushi Goyal,Ananya Mathur,Ankit Anand,Sayan Ranu.GRAIL: Graph Edit Distance and Node Alignment Using LLM-Generated Code[EB/OL].(2025-05-04)[2025-06-06].https://arxiv.org/abs/2505.02124.点此复制
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