ChartThinker: A Contextual Chain-of-Thought Approach to Optimized Chart Summarization
arxiv(2024)
摘要
Data visualization serves as a critical means for presenting data and mining
its valuable insights. The task of chart summarization, through natural
language processing techniques, facilitates in-depth data analysis of charts.
However, there still are notable deficiencies in terms of visual-language
matching and reasoning ability for existing approaches. To address these
limitations, this study constructs a large-scale dataset of comprehensive
chart-caption pairs and fine-tuning instructions on each chart. Thanks to the
broad coverage of various topics and visual styles within this dataset, better
matching degree can be achieved from the view of training data. Moreover, we
propose an innovative chart summarization method, ChartThinker, which
synthesizes deep analysis based on chains of thought and strategies of context
retrieval, aiming to improve the logical coherence and accuracy of the
generated summaries. Built upon the curated datasets, our trained model
consistently exhibits superior performance in chart summarization tasks,
surpassing 8 state-of-the-art models over 7 evaluation metrics. Our dataset and
codes are publicly accessible.
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