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SciDoc2Diagrammer-MAF: Towards Generation of Scientific Diagrams from Documents guided by Multi-Aspect Feedback Refinement

Authors :
Mondal, Ishani
Li, Zongxia
Hou, Yufang
Natarajan, Anandhavelu
Garimella, Aparna
Boyd-Graber, Jordan
Source :
Empirical Methods in Natural Language Processing 2024
Publication Year :
2024

Abstract

Automating the creation of scientific diagrams from academic papers can significantly streamline the development of tutorials, presentations, and posters, thereby saving time and accelerating the process. Current text-to-image models struggle with generating accurate and visually appealing diagrams from long-context inputs. We propose SciDoc2Diagram, a task that extracts relevant information from scientific papers and generates diagrams, along with a benchmarking dataset, SciDoc2DiagramBench. We develop a multi-step pipeline SciDoc2Diagrammer that generates diagrams based on user intentions using intermediate code generation. We observed that initial diagram drafts were often incomplete or unfaithful to the source, leading us to develop SciDoc2Diagrammer-Multi-Aspect-Feedback (MAF), a refinement strategy that significantly enhances factual correctness and visual appeal and outperforms existing models on both automatic and human judgement.<br />Comment: Code and data available at https://github.com/Ishani-Mondal/SciDoc2DiagramGeneration

Details

Database :
arXiv
Journal :
Empirical Methods in Natural Language Processing 2024
Publication Type :
Report
Accession number :
edsarx.2409.19242
Document Type :
Working Paper