cs.AI updates on arXiv.org 08月05日 19:10
DeepVIS: Bridging Natural Language and Data Visualization Through Step-wise Reasoning
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本文提出将思维链推理融入自然语言到可视化(NL2VIS)流程,设计CoT推理过程,开发自动管道,构建nvBench-CoT数据集,并开发DeepVIS交互界面,有效提升NL2VIS质量,提供用户洞察。

arXiv:2508.01700v1 Announce Type: new Abstract: Although data visualization is powerful for revealing patterns and communicating insights, creating effective visualizations requires familiarity with authoring tools and often disrupts the analysis flow. While large language models show promise for automatically converting analysis intent into visualizations, existing methods function as black boxes without transparent reasoning processes, which prevents users from understanding design rationales and refining suboptimal outputs. To bridge this gap, we propose integrating Chain-of-Thought (CoT) reasoning into the Natural Language to Visualization (NL2VIS) pipeline. First, we design a comprehensive CoT reasoning process for NL2VIS and develop an automatic pipeline to equip existing datasets with structured reasoning steps. Second, we introduce nvBench-CoT, a specialized dataset capturing detailed step-by-step reasoning from ambiguous natural language descriptions to finalized visualizations, which enables state-of-the-art performance when used for model fine-tuning. Third, we develop DeepVIS, an interactive visual interface that tightly integrates with the CoT reasoning process, allowing users to inspect reasoning steps, identify errors, and make targeted adjustments to improve visualization outcomes. Quantitative benchmark evaluations, two use cases, and a user study collectively demonstrate that our CoT framework effectively enhances NL2VIS quality while providing insightful reasoning steps to users.

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思维链推理 NL2VIS 数据可视化
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