Automatic Entity Recognition and Typing in Massive Text Data

Xiang Ren, Ahmed El-Kishky, Heng Ji, Jiawei Han
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引用次数: 13

Abstract

In today's computerized and information-based society, individuals are constantly presented with vast amounts of text data, ranging from news articles, scientific publications, product reviews, to a wide range of textual information from social media. To extract value from these large, multi-domain pools of text, it is of great importance to gain an understanding of entities and their relationships. In this tutorial, we introduce data-driven methods to recognize typed entities of interest in massive, domain-specific text corpora. These methods can automatically identify token spans as entity mentions in documents and label their fine-grained types (e.g., people, product and food) in a scalable way. Since these methods do not rely on annotated data, predefined typing schema or hand-crafted features, they can be quickly adapted to a new domain, genre and language. We demonstrate on real datasets including various genres (e.g., news articles, discussion forum posts, and tweets), domains (general vs. bio-medical domains) and languages (e.g., English, Chinese, Arabic, and even low-resource languages like Hausa and Yoruba) how these typed entities aid in knowledge discovery and management.
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海量文本数据中的自动实体识别与输入
在当今计算机化和信息化的社会中,个人不断面临着大量的文本数据,从新闻文章、科学出版物、产品评论到社交媒体上的各种文本信息。为了从这些庞大的、多领域的文本池中提取价值,理解实体及其关系是非常重要的。在本教程中,我们将介绍数据驱动的方法来识别大量领域特定文本语料库中感兴趣的类型实体。这些方法可以自动将令牌范围识别为文档中的实体提及,并以可扩展的方式标记其细粒度类型(例如,人、产品和食品)。由于这些方法不依赖于带注释的数据、预定义的输入模式或手工制作的特性,因此它们可以快速适应新的领域、体裁和语言。我们在真实的数据集上演示了这些类型的实体如何帮助知识发现和管理,包括各种类型(例如,新闻文章、论坛帖子和推文)、领域(通用与生物医学领域)和语言(例如,英语、中文、阿拉伯语,甚至是像豪萨语和约鲁巴语这样的低资源语言)。
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