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Autori principali: Waldendorf, Jonas, Hasan, Bashar Awwad Shiekh, Tsymbalov, Evgenii
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.19565
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author Waldendorf, Jonas
Hasan, Bashar Awwad Shiekh
Tsymbalov, Evgenii
author_facet Waldendorf, Jonas
Hasan, Bashar Awwad Shiekh
Tsymbalov, Evgenii
contents Hallucinations in Speech Large Language Models (SpeechLLMs) pose significant risks, yet existing detection methods typically rely on gold-standard outputs that are costly or impractical to obtain. Moreover, hallucination detection methods developed for text-based LLMs do not directly capture audio-specific signals. We investigate four attention-derived metrics: AUDIORATIO, AUDIOCONSISTENCY, AUDIOENTROPY, and TEXTENTROPY, designed to capture pathological attention patterns associated with hallucination, and train lightweight logistic regression classifiers on these features for efficient inference-time detection. Across automatic speech recognition and speech-to-text translation tasks, evaluations on Qwen-2-Audio and Voxtral-3B show that our approach outperforms uncertainty-based and prior attention-based baselines on in-domain data, achieving improvements of up to +0.23 PR-AUC, and generalises to out-of-domain ASR settings. We further find that strong performance can be achieved with approximately 100 attention heads, improving out-of-domain generalisation compared to using all heads. While effectiveness is model-dependent and task-specific training is required, our results demonstrate that attention patterns provide a valuable tool for hallucination detection in SpeechLLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19565
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publishDate 2026
record_format arxiv
spellingShingle Detecting Hallucinations in SpeechLLMs at Inference Time Using Attention Maps
Waldendorf, Jonas
Hasan, Bashar Awwad Shiekh
Tsymbalov, Evgenii
Computation and Language
Artificial Intelligence
Machine Learning
Hallucinations in Speech Large Language Models (SpeechLLMs) pose significant risks, yet existing detection methods typically rely on gold-standard outputs that are costly or impractical to obtain. Moreover, hallucination detection methods developed for text-based LLMs do not directly capture audio-specific signals. We investigate four attention-derived metrics: AUDIORATIO, AUDIOCONSISTENCY, AUDIOENTROPY, and TEXTENTROPY, designed to capture pathological attention patterns associated with hallucination, and train lightweight logistic regression classifiers on these features for efficient inference-time detection. Across automatic speech recognition and speech-to-text translation tasks, evaluations on Qwen-2-Audio and Voxtral-3B show that our approach outperforms uncertainty-based and prior attention-based baselines on in-domain data, achieving improvements of up to +0.23 PR-AUC, and generalises to out-of-domain ASR settings. We further find that strong performance can be achieved with approximately 100 attention heads, improving out-of-domain generalisation compared to using all heads. While effectiveness is model-dependent and task-specific training is required, our results demonstrate that attention patterns provide a valuable tool for hallucination detection in SpeechLLMs.
title Detecting Hallucinations in SpeechLLMs at Inference Time Using Attention Maps
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2604.19565