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A STACKED GRAPHICAL MODEL FOR ASSOCIATING SUB-IMAGES WITH SUB-CAPTIONS

机译:用于将子图像与子字幕相关联的堆栈图形模型

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There is extensive interest in mining data from full text. We have built a system called SLIF (for Subcellular Location Image Finder), which extracts information on one particular aspect of biology from a combination of text and images in journal articles. Associating the information from the text and image requires matching sub-figures with the sentences in the text. We introduce a stacked graphical model, a meta-learning scheme to augment a base learner by expanding features based on related instances, to match the labels of sub-figures with labels of sentences. The experimental results show a significant improvement in the matching accuracy of the stacked graphical model (81.3%) as compared with a relational dependency network (70.8%) or the current algorithm in SLIF (64.3%).
机译:从全文本中挖掘数据引起了广泛的兴趣。我们建立了一个名为SLIF(用于亚细胞定位图像查找器)的系统,该系统从期刊文章中的文本和图像组合中提取有关生物学某一方面的信息。将来自文本和图像的信息关联起来需要将子图与文本中的句子匹配。我们引入了一个堆叠的图形模型,这是一种元学习方案,通过基于相关实例扩展功能来扩展基础学习者,以将子图的标签与句子的标签相匹配。实验结果表明,与关系依赖网络(70.8%)或SLIF中的当前算法(64.3%)相比,堆叠图形模型的匹配精度(81.3%)有了显着提高。

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