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Main Authors: Hu, Yiheng, Wang, Xiaoyang, Liu, Qing, Xu, Xiwei, Fu, Qian, Zhang, Wenjie, Zhu, Liming
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.16051
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author Hu, Yiheng
Wang, Xiaoyang
Liu, Qing
Xu, Xiwei
Fu, Qian
Zhang, Wenjie
Zhu, Liming
author_facet Hu, Yiheng
Wang, Xiaoyang
Liu, Qing
Xu, Xiwei
Fu, Qian
Zhang, Wenjie
Zhu, Liming
contents Multimodal Multi-hop question answering requires integrating information from diverse sources, such as images and texts, to derive answers. Existing methods typically rely on sequential retrieval and reasoning, where each step builds on the previous output. However, this single-path paradigm makes them vulnerable to errors due to misleading intermediate steps. Moreover, developing multimodal models can be computationally expensive, often requiring extensive training. To address these limitations, we propose a training-free framework guided by an Adaptive Planning Graph, which consists of planning, retrieval and reasoning modules. The planning module analyzes the current state of the Adaptive Planning Graph, determines the next action and where to expand the graph, which enables dynamic and flexible exploration of reasoning paths. To handle retrieval of text to unspecified target modalities, we devise modality-specific strategies that dynamically adapt to distinct data types. Our approach preserves the characteristics of multimodal information without costly task-specific training, enabling seamless integration with up-to-date models. Finally, the experiments on MultimodalQA and WebQA show that our approach matches or outperforms existing models that rely on training.
format Preprint
id arxiv_https___arxiv_org_abs_2508_16051
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MMAPG: A Training-Free Framework for Multimodal Multi-hop Question Answering via Adaptive Planning Graphs
Hu, Yiheng
Wang, Xiaoyang
Liu, Qing
Xu, Xiwei
Fu, Qian
Zhang, Wenjie
Zhu, Liming
Artificial Intelligence
Multimodal Multi-hop question answering requires integrating information from diverse sources, such as images and texts, to derive answers. Existing methods typically rely on sequential retrieval and reasoning, where each step builds on the previous output. However, this single-path paradigm makes them vulnerable to errors due to misleading intermediate steps. Moreover, developing multimodal models can be computationally expensive, often requiring extensive training. To address these limitations, we propose a training-free framework guided by an Adaptive Planning Graph, which consists of planning, retrieval and reasoning modules. The planning module analyzes the current state of the Adaptive Planning Graph, determines the next action and where to expand the graph, which enables dynamic and flexible exploration of reasoning paths. To handle retrieval of text to unspecified target modalities, we devise modality-specific strategies that dynamically adapt to distinct data types. Our approach preserves the characteristics of multimodal information without costly task-specific training, enabling seamless integration with up-to-date models. Finally, the experiments on MultimodalQA and WebQA show that our approach matches or outperforms existing models that rely on training.
title MMAPG: A Training-Free Framework for Multimodal Multi-hop Question Answering via Adaptive Planning Graphs
topic Artificial Intelligence
url https://arxiv.org/abs/2508.16051