论文标题
处理文档的结构:法语历史报纸的逻辑布局分析
Processing the structure of documents: Logical Layout Analysis of historical newspapers in French
论文作者
论文摘要
背景。近年来,图书馆和档案馆主持了重要的数字化运动,从而开放了获得大量历史文档的渠道。尽管此类文档通常以XML Alto文档的形式提供,但它们缺乏有关其逻辑结构的信息。在本文中,我们解决了适用于法语历史文档的逻辑布局分析的问题。我们提出了一种基于规则的方法,它可以评估并与两个机器学习模型,即开膛手和梯度提升。我们的数据集包含法国报纸,期刊和杂志,该报纸于20世纪上半叶发表在弗朗西·科姆特地区。结果。我们基于规则的系统在几乎所有评估中都优于其他两个模型。它特别有更好的回忆结果,表明我们的系统涵盖了与其他两个模型相比,每个逻辑标签的类型都要多。在将开膛手与梯度提升进行比较时,我们可以观察到梯度提升的精度得分更好,但开膛手的回忆得分更好。结论。评估表明,我们的系统的表现优于两个机器学习模型,并提供了明显更高的回忆。它还确认我们的系统可用于生成带注释的数据集,这些数据集足够大,可以设想机器学习或深度学习方法,以实现逻辑布局分析的任务。将规则和机器学习模型结合到混合系统中可能会提供更好的性能。此外,随着历史文档中的布局迅速发展,克服该问题的一种可能解决方案是将学习算法应用于自举规则集,适合于不同的出版物期。
Background. In recent years, libraries and archives led important digitisation campaigns that opened the access to vast collections of historical documents. While such documents are often available as XML ALTO documents, they lack information about their logical structure. In this paper, we address the problem of Logical Layout Analysis applied to historical documents in French. We propose a rule-based method, that we evaluate and compare with two Machine-Learning models, namely RIPPER and Gradient Boosting. Our data set contains French newspapers, periodicals and magazines, published in the first half of the twentieth century in the Franche-Comté Region. Results. Our rule-based system outperforms the two other models in nearly all evaluations. It has especially better Recall results, indicating that our system covers more types of every logical label than the other two models. When comparing RIPPER with Gradient Boosting, we can observe that Gradient Boosting has better Precision scores but RIPPER has better Recall scores. Conclusions. The evaluation shows that our system outperforms the two Machine Learning models, and provides significantly higher Recall. It also confirms that our system can be used to produce annotated data sets that are large enough to envisage Machine Learning or Deep Learning approaches for the task of Logical Layout Analysis. Combining rules and Machine Learning models into hybrid systems could potentially provide even better performances. Furthermore, as the layout in historical documents evolves rapidly, one possible solution to overcome this problem would be to apply Rule Learning algorithms to bootstrap rule sets adapted to different publication periods.