AI RESEARCH
How to Utilize Complementary Vision-Text Information for 2D Structure Understanding
arXiv CS.CL
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ArXi:2603.16245v1 Announce Type: cross LLMs typically linearize 2D tables into 1D sequences to fit their autoregressive architecture, which weakens row-column adjacency and other layout cues. In contrast, purely visual encoders can capture spatial cues, yet often struggle to preserve exact cell text. Our analysis reveals that these two modalities provide highly distinct information to LLMs and exhibit strong complementarity. However, direct concatenation and other fusion methods yield limited gains and frequently