Named Entity Recognition and Intent Classification are among the most important subfields of the field of Natural Language Processing. Recent research has lead to the development of faster, more sophisticated and efficient models to tackle the problems posed by those two tasks. In this work we explore the effectiveness of two separate families of Deep Learning networks for those tasks: Bidirectional Long Short-Term networks and Transformer-based networks. The models were trained and tested on the ATIS benchmark dataset for both English and Greek languages. The purpose of this paper is to present a comparative study of the two groups of networks for both languages and showcase the results of our experiments. The models, being the current state-of-the-art, yielded impressive results and achieved high performance.
翻译:命名实体识别和意向分类是自然语言处理领域最重要的子领域之一,最近的研究导致开发了更快捷、更先进、更高效的模式,以解决这两项任务造成的问题,在这项工作中,我们探讨了深学习网络的两个单独单元为这些任务(双向长期短期网络和以变异器为基础的网络)的有效性,这些模型经过了英语和希腊语的ATIS基准数据集的培训和测试,目的是对两种语言的两组网络进行比较研究,并展示我们实验的结果。这些模型是目前最先进的,取得了令人印象深刻的成果并取得了很高的业绩。