CharTide: Data-Centric Chart-to-Code Generation via Tri-Perspective Tuning and Inquiry-Driven Evolution
arXiv cs.CV / 4/27/2026
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Key Points
- CharTide addresses limitations in chart-to-code generation by focusing on data design rather than only scaling existing vision-language models.
- It builds a 2M-sample training dataset using Tri-Perspective Tuning that decouples visual perception, code logic text, and modality fusion into separate streams for improved learning.
- CharTide reformulates model alignment as data verification, using an Inquiry-Driven RL approach based on information invariance across original and generated charts.
- An RL reward is generated via a frozen “Inspector” that checks outputs through atomic QA tasks, providing verifiable signals tied to answer accuracy rather than heuristic scoring.
- Experiments on ChartMimic, Plot2Code, and ChartX show CharTide-7B/8B outperforming open-source baselines, surpassing GPT-4o, and competing with GPT-5.
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