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Autori principali: Wang, Longzheng, Xu, Xiaohan, Zhang, Lei, Lu, Jiarui, Xu, Yongxiu, Xu, Hongbo, Tang, Minghao, Zhang, Chuang
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2403.14171
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author Wang, Longzheng
Xu, Xiaohan
Zhang, Lei
Lu, Jiarui
Xu, Yongxiu
Xu, Hongbo
Tang, Minghao
Zhang, Chuang
author_facet Wang, Longzheng
Xu, Xiaohan
Zhang, Lei
Lu, Jiarui
Xu, Yongxiu
Xu, Hongbo
Tang, Minghao
Zhang, Chuang
contents Automatic detection of multimodal misinformation has gained a widespread attention recently. However, the potential of powerful Large Language Models (LLMs) for multimodal misinformation detection remains underexplored. Besides, how to teach LLMs to interpret multimodal misinformation in cost-effective and accessible way is still an open question. To address that, we propose MMIDR, a framework designed to teach LLMs in providing fluent and high-quality textual explanations for their decision-making process of multimodal misinformation. To convert multimodal misinformation into an appropriate instruction-following format, we present a data augmentation perspective and pipeline. This pipeline consists of a visual information processing module and an evidence retrieval module. Subsequently, we prompt the proprietary LLMs with processed contents to extract rationales for interpreting the authenticity of multimodal misinformation. Furthermore, we design an efficient knowledge distillation approach to distill the capability of proprietary LLMs in explaining multimodal misinformation into open-source LLMs. To explore several research questions regarding the performance of LLMs in multimodal misinformation detection tasks, we construct an instruction-following multimodal misinformation dataset and conduct comprehensive experiments. The experimental findings reveal that our MMIDR exhibits sufficient detection performance and possesses the capacity to provide compelling rationales to support its assessments.
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publishDate 2024
record_format arxiv
spellingShingle MMIDR: Teaching Large Language Model to Interpret Multimodal Misinformation via Knowledge Distillation
Wang, Longzheng
Xu, Xiaohan
Zhang, Lei
Lu, Jiarui
Xu, Yongxiu
Xu, Hongbo
Tang, Minghao
Zhang, Chuang
Computation and Language
Automatic detection of multimodal misinformation has gained a widespread attention recently. However, the potential of powerful Large Language Models (LLMs) for multimodal misinformation detection remains underexplored. Besides, how to teach LLMs to interpret multimodal misinformation in cost-effective and accessible way is still an open question. To address that, we propose MMIDR, a framework designed to teach LLMs in providing fluent and high-quality textual explanations for their decision-making process of multimodal misinformation. To convert multimodal misinformation into an appropriate instruction-following format, we present a data augmentation perspective and pipeline. This pipeline consists of a visual information processing module and an evidence retrieval module. Subsequently, we prompt the proprietary LLMs with processed contents to extract rationales for interpreting the authenticity of multimodal misinformation. Furthermore, we design an efficient knowledge distillation approach to distill the capability of proprietary LLMs in explaining multimodal misinformation into open-source LLMs. To explore several research questions regarding the performance of LLMs in multimodal misinformation detection tasks, we construct an instruction-following multimodal misinformation dataset and conduct comprehensive experiments. The experimental findings reveal that our MMIDR exhibits sufficient detection performance and possesses the capacity to provide compelling rationales to support its assessments.
title MMIDR: Teaching Large Language Model to Interpret Multimodal Misinformation via Knowledge Distillation
topic Computation and Language
url https://arxiv.org/abs/2403.14171