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Autores principales: Azachi, Ofir, Eliyahu, Kfir, Ani, Eyal El, Himelstein, Rom, Reichart, Roi, Pinter, Yuval, Calderon, Nitay
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.20379
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author Azachi, Ofir
Eliyahu, Kfir
Ani, Eyal El
Himelstein, Rom
Reichart, Roi
Pinter, Yuval
Calderon, Nitay
author_facet Azachi, Ofir
Eliyahu, Kfir
Ani, Eyal El
Himelstein, Rom
Reichart, Roi
Pinter, Yuval
Calderon, Nitay
contents Hallucinations of vision-language models (VLMs), which are misalignments between visual content and generated text, undermine the reliability of VLMs. One common approach for detecting them employs the same VLM, or a different one, to assess generated outputs. This process is computationally intensive and increases model latency. In this paper, we explore an efficient on-the-fly method for hallucination detection by training traditional ML models over signals based on the VLM's next-token probabilities (NTPs). NTPs provide a direct quantification of model uncertainty. We hypothesize that high uncertainty (i.e., a low NTP value) is strongly associated with hallucinations. To test this, we introduce a dataset of 1,400 human-annotated statements derived from VLM-generated content, each labeled as hallucinated or not, and use it to test our NTP-based lightweight method. Our results demonstrate that NTP-based features are valuable predictors of hallucinations, enabling fast and simple ML models to achieve performance comparable to that of strong VLMs. Furthermore, augmenting these NTPs with linguistic NTPs, computed by feeding only the generated text back into the VLM, enhances hallucination detection performance. Finally, integrating hallucination prediction scores from VLMs into the NTP-based models led to better performance than using either VLMs or NTPs alone. We hope this study paves the way for simple, lightweight solutions that enhance the reliability of VLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2509_20379
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Leveraging NTPs for Efficient Hallucination Detection in VLMs
Azachi, Ofir
Eliyahu, Kfir
Ani, Eyal El
Himelstein, Rom
Reichart, Roi
Pinter, Yuval
Calderon, Nitay
Computer Vision and Pattern Recognition
Computation and Language
Machine Learning
Hallucinations of vision-language models (VLMs), which are misalignments between visual content and generated text, undermine the reliability of VLMs. One common approach for detecting them employs the same VLM, or a different one, to assess generated outputs. This process is computationally intensive and increases model latency. In this paper, we explore an efficient on-the-fly method for hallucination detection by training traditional ML models over signals based on the VLM's next-token probabilities (NTPs). NTPs provide a direct quantification of model uncertainty. We hypothesize that high uncertainty (i.e., a low NTP value) is strongly associated with hallucinations. To test this, we introduce a dataset of 1,400 human-annotated statements derived from VLM-generated content, each labeled as hallucinated or not, and use it to test our NTP-based lightweight method. Our results demonstrate that NTP-based features are valuable predictors of hallucinations, enabling fast and simple ML models to achieve performance comparable to that of strong VLMs. Furthermore, augmenting these NTPs with linguistic NTPs, computed by feeding only the generated text back into the VLM, enhances hallucination detection performance. Finally, integrating hallucination prediction scores from VLMs into the NTP-based models led to better performance than using either VLMs or NTPs alone. We hope this study paves the way for simple, lightweight solutions that enhance the reliability of VLMs.
title Leveraging NTPs for Efficient Hallucination Detection in VLMs
topic Computer Vision and Pattern Recognition
Computation and Language
Machine Learning
url https://arxiv.org/abs/2509.20379