幸存的法律丛林:文本分类的意大利法律在极端嘈杂的条件

Riccardo Coltrinari, Alessandro Antinori, Fabio Celli
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摘要

在本文中,我们提出了一种基于线性判别分析的法律文本分类方法,用于极大噪声数据的法律文本分类。结果表明,将线性判别分析作为分类器用于集成学习和多标签文本分类,无论在清洁条件下还是在噪声条件下都能取得很好的效果。1动机和背景我们在意大利语中解决面向商业的法律文件的文本分类,但具有自定义和重叠的产品类别层次结构。解决类似任务的一个典型方法是利用EUROVOC (Daudaravicius, 2012)等资源,这是一个多语言词典,由超过6700个分层组织的类描述符组成,被欧盟(EU)的许多组织用于分类和检索官方文件。我们的编辑系统有23个产品类别和超过20600个标签,在超过15年的时间里为不同的客户手工注释和定制,因此不可能利用EUROVOC这样的资源对文档进行分类。在本文中,我们提出了一种基于线性判别分析的快速有效的文档分类方法,这种降维技术已经成功地应用于许多领域,包括神经影像学和医学。我们相信我们的贡献将对NLP社区在文档分类的背景下有用。本文作者的版权为c©2020。在知识共享许可国际署名4.0 (CC BY 4.0)下允许使用。以及自动本体填充,特别是在处理非常嘈杂的数据时。本文的结构如下:在1.1节中,我们介绍了文本分类领域的相关工作和线性判别分析的潜力,在第2节中,我们描述了我们使用的数据集,在第3节中,我们报告并讨论了我们的分类实验结果,在第4节中,我们得出了我们的结论。
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Surviving the Legal Jungle: Text Classification of Italian Laws in Extremely Noisy Conditions
In this paper, we present a method based on Linear Discriminant Analysis for legal text classification of extremely noisy data, such as duplicated documents classified in different classes. The results show that Linear Discriminant Analysis obtains very good performances both in clean and noisy conditions, if used as classifier in ensemble learning and in multi-label text classification. 1 Motivation and Background We address text categorization of businessoriented legal documents in Italian, but with a custom and overlapping hierarchy of product categories. A typical approach to tackle similar tasks is to exploit resources such as EUROVOC (Daudaravicius, 2012), a multilingual thesaurus consisting of over 6700 hierarchically-organised class descriptors used by many organizations of the European Union (EU) for the classification and retrieval of official documents. Our editorial system has a hierarchy of 23 product categories and more than 20600 labels, manually annotated and customized for different clients in more than 15 years, hence it is not possible to exploit resources like EUROVOC to categorize documents. In this paper, we propose a fast and efficient method for document classification for noisy data based on Linear Discriminant Analysis, a dimensionality reduction technique that has been employed successfully in many domains, including neuroimaging and medicine. We believe that our contribution will be useful to the NLP community in the context of document categorization as Copyright c ©2020 for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0). well as automatic ontology population, in particular when dealing with very noisy data. The paper is structured as follows: in Section 1.1 we present the related works in the field of text classification and the potential of Linear Discriminant Analysis, in Section 2 we describe the datasets we used, in Section 3 we report and discuss the result of our classification experiments and in Section 4 we draw our conclusions.
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