In some areas, such as Cognitive Linguistics, researchers are still using traditional techniques based on manual rules and patterns. Since the definition of shell noun is rather subjective and there are many exceptions, this time-consuming work had to be done by hand in the past when Deep Learning techniques were not mature enough. With the increasing number of networked languages, these rules are becoming less useful. However, there is a better alternative now. With the development of Deep Learning, pre-trained language models have provided a good technical basis for Natural Language Processing. Automated processes based on Deep Learning approaches are more in line with modern needs. This paper collaborates across borders to propose two Neural Network models for the automatic detection of shell nouns and experiment on the WikiText-2 dataset. The proposed approaches not only allow the entire process to be automated, but the precision has reached 94% even on completely unseen articles, comparable to that of human annotators. This shows that the performance and generalization ability of the model is good enough to be used for research purposes. Many new nouns are found that fit the definition of shell noun very well. All discovered shell nouns as well as pre-trained models and code are available on GitHub.
翻译:在认知语言学等一些领域,研究人员仍在使用基于手工规则和模式的传统技术。由于贝壳名词的定义是主观的,而且有许多例外,在深学习技术不够成熟时,这种耗时的工作必须过去由手工完成。随着网络语言数量的增加,这些规则正在变得不那么有用。然而,现在有一个更好的替代办法。随着深学习的开发,预先培训的语言模型为自然语言处理提供了良好的技术基础。基于深学习方法的自动化程序更符合现代需要。本文跨边界合作提出两个神经网络模型,用于自动检测贝壳名词和试验WikitText-2数据集。提议的方法不仅允许整个过程自动化,而且使完全看不见的物品的精确度达到94%,这与人类的告示者相当。这表明模型的性能和普及能力足以用于研究目的。许多新的名名都发现符合贝壳名定义。所有已发现的空壳号模型和预型号都可用。