Tables as Images? Exploring the Strengths and Limitations of LLMs on Multimodal Representations of Tabular Data
Abstract
This study evaluates the performance of LLMs on interpreting tabular data using various prompting strategies and data representations across six benchmarks.
In this paper, we investigate the effectiveness of various LLMs in interpreting tabular data through different prompting strategies and data formats. Our analysis extends across six benchmarks for table-related tasks such as question-answering and fact-checking. We introduce for the first time the assessment of LLMs' performance on image-based table representations. Specifically, we compare five text-based and three image-based table representations, demonstrating the influence of representation and prompting on LLM performance. Our study provides insights into the effective use of LLMs on table-related tasks.
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