CLCROct 13, 2025

LLMAtKGE: Large Language Models as Explainable Attackers against Knowledge Graph Embeddings

arXiv:2510.11584v1h-index: 1
Originality Incremental advance
AI Analysis

This addresses the need for explainable and generalizable attacks in knowledge graph security, though it is incremental by building on existing black-box methods.

The paper tackles the problem of adversarial attacks on knowledge graph embeddings by proposing LLMAtKGE, a framework that uses large language models to select attack targets and generate human-readable explanations, outperforming black-box baselines and showing competitive performance with white-box methods.

Adversarial attacks on knowledge graph embeddings (KGE) aim to disrupt the model's ability of link prediction by removing or inserting triples. A recent black-box method has attempted to incorporate textual and structural information to enhance attack performance. However, it is unable to generate human-readable explanations, and exhibits poor generalizability. In the past few years, large language models (LLMs) have demonstrated powerful capabilities in text comprehension, generation, and reasoning. In this paper, we propose LLMAtKGE, a novel LLM-based framework that selects attack targets and generates human-readable explanations. To provide the LLM with sufficient factual context under limited input constraints, we design a structured prompting scheme that explicitly formulates the attack as multiple-choice questions while incorporating KG factual evidence. To address the context-window limitation and hesitation issues, we introduce semantics-based and centrality-based filters, which compress the candidate set while preserving high recall of attack-relevant information. Furthermore, to efficiently integrate both semantic and structural information into the filter, we precompute high-order adjacency and fine-tune the LLM with a triple classification task to enhance filtering performance. Experiments on two widely used knowledge graph datasets demonstrate that our attack outperforms the strongest black-box baselines and provides explanations via reasoning, and showing competitive performance compared with white-box methods. Comprehensive ablation and case studies further validate its capability to generate explanations.

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