Slot filling and intent detection have become a significant theme in the field of natural language understanding. Even though slot filling is intensively associated with intent detection, the characteristics of the information required for both tasks are different while most of those approaches may not fully aware of this problem. In addition, balancing the accuracy of two tasks effectively is an inevitable problem for the joint learning model. In this paper, a Continual Learning Interrelated Model (CLIM) is proposed to consider semantic information with different characteristics and balance the accuracy between intent detection and slot filling effectively. The experimental results show that CLIM achieves state-of-the-art performace on slot filling and intent detection on ATIS and Snips.
翻译:尽管填补空档与探测意图密切相关,但这两项任务所需信息的特点各不相同,而大多数方法可能并不完全意识到这一问题。此外,有效平衡两个任务的准确性对于联合学习模式来说是一个不可避免的问题。本文件建议采用一个连续学习相互关联的模型,以考虑具有不同特点的语义信息,并平衡意图探测和有效填补空档之间的准确性。实验结果表明,CLIM在填补空档和识别ATIS和Snips上取得了最新水平的性能和意向探测。