Piecing It All Together: Verifying Multi-Hop Multimodal Claims (2411.09547v2)
Abstract: Existing claim verification datasets often do not require systems to perform complex reasoning or effectively interpret multimodal evidence. To address this, we introduce a new task: multi-hop multimodal claim verification. This task challenges models to reason over multiple pieces of evidence from diverse sources, including text, images, and tables, and determine whether the combined multimodal evidence supports or refutes a given claim. To study this task, we construct MMCV, a large-scale dataset comprising 15k multi-hop claims paired with multimodal evidence, generated and refined using LLMs, with additional input from human feedback. We show that MMCV is challenging even for the latest state-of-the-art multimodal LLMs, especially as the number of reasoning hops increases. Additionally, we establish a human performance benchmark on a subset of MMCV. We hope this dataset and its evaluation task will encourage future research in multimodal multi-hop claim verification.
- Haoran Wang (141 papers)
- Aman Rangapur (10 papers)
- Xiongxiao Xu (10 papers)
- Yueqing Liang (14 papers)
- Haroon Gharwi (1 paper)
- Carl Yang (130 papers)
- Kai Shu (88 papers)