Text classification, a core component of task-oriented dialogue systems, attracts continuous research from both the research and industry community, and has resulted in tremendous progress. However, existing method does not consider the use of label information, which may weaken the performance of text classification systems in some token-aware scenarios. To address the problem, in this paper, we introduce the use of label information as label embedding for the task of text classification and achieve remarkable performance on benchmark dataset.
翻译:文本分类是面向任务的对话系统的核心组成部分,它吸引了研究界和工业界的持续研究,并取得了巨大进展;然而,现有方法并不考虑使用标签信息,因为在某些象征性的情景下,标签信息可能会削弱文本分类系统的性能;为了解决这一问题,我们在本文件中采用标签信息作为文本分类任务的标签,并在基准数据集上取得显著成绩。