Spoken Language Understanding (SLU) is composed of two subtasks: intent detection (ID) and slot filling (SF). There are two lines of research on SLU. One jointly tackles these two subtasks to improve their prediction accuracy, and the other focuses on the domain-adaptation ability of one of the subtasks. In this paper, we attempt to bridge these two lines of research and propose a joint and domain adaptive approach to SLU. We formulate SLU as a constrained generation task and utilize a dynamic vocabulary based on domain-specific ontology. We conduct experiments on the ASMixed and MTOD datasets and achieve competitive performance with previous state-of-the-art joint models. Besides, results show that our joint model can be effectively adapted to a new domain.
翻译:口语理解(SLU)由两个子任务组成:意图探测(ID)和空档填充(SF),对SLU有两条研究线。一个是共同处理这两个子任务以提高预测准确性,另一个是侧重于子任务之一的域适应能力。在本文中,我们试图将这两条研究线连接起来,并向SLU提出一个联合和域适应方法。我们把SLU作为有限的一代任务,并利用基于特定领域本体的动态词汇。我们用ASMixed和MTOD数据集进行实验,并实现与以前最先进的联合模型的竞争性性工作。此外,结果显示,我们的联合模型可以有效地适应新的领域。