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Main Authors: Kang, Xiaoqiang, Wu, Shengen, Wang, Zimu, Liu, Yilin, Jin, Xiaobo, Huang, Kaizhu, Wang, Wei, Yue, Yutao, Huang, Xiaowei, Wang, Qiufeng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.16889
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author Kang, Xiaoqiang
Wu, Shengen
Wang, Zimu
Liu, Yilin
Jin, Xiaobo
Huang, Kaizhu
Wang, Wei
Yue, Yutao
Huang, Xiaowei
Wang, Qiufeng
author_facet Kang, Xiaoqiang
Wu, Shengen
Wang, Zimu
Liu, Yilin
Jin, Xiaobo
Huang, Kaizhu
Wang, Wei
Yue, Yutao
Huang, Xiaowei
Wang, Qiufeng
contents Existing table understanding methods face challenges due to complex table structures and intricate logical reasoning. While supervised finetuning (SFT) dominates existing research, reinforcement learning (RL), such as Group Relative Policy Optimization (GRPO), has shown promise but struggled with low initial policy accuracy and coarse rewards in tabular contexts. In this paper, we introduce Table-R1, a three-stage RL framework that enhances multimodal table understanding through: (1) Warm-up that prompts initial perception and reasoning capabilities, (2) Perception Alignment GRPO (PA-GRPO), which employs continuous Tree-Edit-Distance Similarity (TEDS) rewards for recognizing table structures and contents, and (3) Hint-Completion GRPO (HC-GRPO), which utilizes fine-grained rewards of residual steps based on the hint-guided question. Extensive experiments demonstrate that Table-R1 can boost the model's table reasoning performance obviously on both held-in and held-out datasets, outperforming SFT and GRPO largely. Notably, Qwen2-VL-7B with Table-R1 surpasses larger specific table understanding models (e.g., Table-LLaVA 13B), even achieving comparable performance to the closed-source model GPT-4o on held-in datasets, demonstrating the efficacy of each stage of Table-R1 in overcoming initialization bottlenecks and reward sparsity, thereby advancing robust multimodal table understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2509_16889
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Can GRPO Boost Complex Multimodal Table Understanding?
Kang, Xiaoqiang
Wu, Shengen
Wang, Zimu
Liu, Yilin
Jin, Xiaobo
Huang, Kaizhu
Wang, Wei
Yue, Yutao
Huang, Xiaowei
Wang, Qiufeng
Computation and Language
Existing table understanding methods face challenges due to complex table structures and intricate logical reasoning. While supervised finetuning (SFT) dominates existing research, reinforcement learning (RL), such as Group Relative Policy Optimization (GRPO), has shown promise but struggled with low initial policy accuracy and coarse rewards in tabular contexts. In this paper, we introduce Table-R1, a three-stage RL framework that enhances multimodal table understanding through: (1) Warm-up that prompts initial perception and reasoning capabilities, (2) Perception Alignment GRPO (PA-GRPO), which employs continuous Tree-Edit-Distance Similarity (TEDS) rewards for recognizing table structures and contents, and (3) Hint-Completion GRPO (HC-GRPO), which utilizes fine-grained rewards of residual steps based on the hint-guided question. Extensive experiments demonstrate that Table-R1 can boost the model's table reasoning performance obviously on both held-in and held-out datasets, outperforming SFT and GRPO largely. Notably, Qwen2-VL-7B with Table-R1 surpasses larger specific table understanding models (e.g., Table-LLaVA 13B), even achieving comparable performance to the closed-source model GPT-4o on held-in datasets, demonstrating the efficacy of each stage of Table-R1 in overcoming initialization bottlenecks and reward sparsity, thereby advancing robust multimodal table understanding.
title Can GRPO Boost Complex Multimodal Table Understanding?
topic Computation and Language
url https://arxiv.org/abs/2509.16889