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Evaluating LLMs for Visualization Generation and Understanding
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本文展示不同大型语言模型(LLMs)基于简单提示生成可视化代码的能力,并分析其理解常见可视化方法的能力。研究发现LLMs能生成简单的可视化代码,但生成复杂可视化存在困难,且在回答有关可视化的问题时存在错误。

arXiv:2507.22890v1 Announce Type: cross Abstract: Information Visualization has been utilized to gain insights from complex data. In recent times, Large Language models (LLMs) have performed very well in many tasks. In this paper, we showcase the capabilities of different popular LLMs to generate code for visualization based on simple prompts. We also analyze the power of LLMs to understand some common visualizations by answering questions. Our study shows that LLMs could generate code for some simpler visualizations such as bar and pie charts. Moreover, they could answer simple questions about visualizations. However, LLMs also have several limitations. For example, some of them had difficulty generating complex visualizations, such as violin plot. LLMs also made errors in answering some questions about visualizations, for example, identifying relationships between close boundaries and determining lengths of shapes. We believe that our insights can be used to improve both LLMs and Information Visualization systems.

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LLMs 信息可视化 代码生成 数据分析
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