Detecting Contextual Hallucinations in LLMs with Frequency-Aware Attention
Abstract
Hallucination detection is critical for ensuring the reliability of large language models (LLMs) in context-based generation. Prior work has explored intrinsic signals available during generation, among which attention offers a direct view of grounding behavior. However, existing approaches typically rely on coarse summaries that fail to capture fine-grained instabilities in attention. Inspired by signal processing, we introduce a frequency-aware perspective on attention by analyzing its variation during generation. We model attention distributions as discrete signals and extract high-frequency components that reflect rapid local changes in attention. Our analysis reveals that hallucinated tokens are associated with high-frequency attention energy, reflecting fragmented and unstable grounding behavior. Based on this insight, we develop a lightweight hallucination detector using high-frequency attention features. Experiments on the RAGTruth and HalluRAG benchmarks show that our approach achieves performance gains over verification-based, internal-representation-based, and attention-based methods across models and tasks.
Cite
@article{arxiv.2602.18145,
title = {Detecting Contextual Hallucinations in LLMs with Frequency-Aware Attention},
author = {Siya Qi and Yudong Chen and Runcong Zhao and Qinglin Zhu and Zhanghao Hu and Wei Liu and Yulan He and Zheng Yuan and Lin Gui},
journal= {arXiv preprint arXiv:2602.18145},
year = {2026}
}
Comments
25 pages, 10 figures