Give the Truth:Incorporate Semantic Slot into Abstractive Dialogue Summarization

摘要

Abstractive dialogue summarization suffers from a lots of factual errors, which are due to scattered salient elements in the multi-speaker information interaction process. In this work, we design a heterogeneous semantic slot graph with a slot-level mask cross-attention to enhance the slot features for more correct summarization. We also propose a slot-driven beam search algorithm in the decoding process to give priority to generating salient elements in a limited length by “filling-in-the-blanks”. Besides, an adversarial contrastive learning assisting the training process is introduced to improve the generalization of our model. Experimental performance on different types of factual errors shows the effectiveness of our methods and human evaluation further verifies the results.

会议
EMNLP 2021
赵璐璐
赵璐璐
博士研究生

对话摘要生成,关系抽取

曾伟豪
曾伟豪
硕士研究生
徐蔚然
徐蔚然
副教授,硕士生导师,博士生导师

信息检索,模式识别,机器学习