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Figure Classification in Biomedical Literature towards Figure Mining

机译:数字化生物医学文学对图挖掘的分类

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Biomedical papers contain large amounts of figures. Since they provide important information about research outcomes, mining techniques targeting them have attracted a great deal of attention. Our final goal is to develop a figure finding system, FigFinder, to retrieve figures relevant to a user’s query by mining information contained in figures, their legends, and the main text in an integrative manner. In this study, we worked on figure classification to choose those representing signaling or metabolic pathways, based on textual information contained in biomedical papers, as the first step to develop FigFinder. We took several supervised machine learning methods, and could confirm that the use of main text combined with figure legends was quite effective. Although many groups have considered figure legends, this is the first attempt to address figure classification task by utilizing figure legends together with main text to our knowledge.
机译:生物医学论文含有大量数字。由于他们提供有关研究成果的重要信息,因此针对它们的采矿技术引起了大量的关注。我们的最终目标是开发一个数字查找系统,FICINTE,以通过以总体方式挖掘包含在图中包含的信息,其传说和主文本中包含的信息来检索与用户查询相关的数字。在这项研究中,我们研究了数字分类,以根据生物医学论文所含的文本信息选择代表信令或代谢途径的那些,作为开发镶饰的第一步。我们采取了多次监督机器学习方法,可以确认使用主要文本与图例相结合非常有效。虽然很多组已经考虑了数字图例,但这是通过将图形传说与主要文本与我们的知识一起利用图传说来解决数字分类任务的第一次尝试。

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