Section 01
Introduction: LAGMiD Framework—A New Solution for Academic Citation Error Detection Combining LLMs and GNNs
This article introduces the LAGMiD (LLM-Augmented Graph Miscitation Detector) framework, which innovatively combines the reasoning capabilities of large language models (LLMs) with the topological analysis capabilities of graph neural networks (GNNs) to efficiently detect citation errors in academic networks. The article covers the problem background of citation errors, limitations of existing methods, core design of LAGMiD, experimental performance, application scenarios, and future directions, providing new ideas for solving the problem of incorrect citations in academic literature.