Semantic-based Pre-training for Dialogue Understanding

Abstract

Pre-trained language models have made great progress on dialogue tasks. However, these models are typically trained on surface dialogue text, thus are proven to be weak in understanding the main semantic meaning of a dialogue context. We investigate Abstract Meaning Representation (AMR) as explicit semantic knowledge for pre-training models to capture the core semantic information in dialogues during pre-training. In particular, we propose a semantic-based pre-training framework that extends the standard pre-training framework by three tasks for learning 1) core semantic units, 2) semantic relations and 3) the overall semantic representation according to AMR graphs. Experiments on the understanding of both chit-chats and task-oriented dialogues show the superiority of our model. To our knowledge, we are the first to leverage a deep semantic representation for dialogue pre-training.

Publication
In Proceedings of the 29th International Conference on Computational Linguistics (COLING, CCF-B), Gyeongju, Korea, October 12-17, 2022
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Xuefeng Bai
Xuefeng Bai
Ph.D candidate

My research interests include semantics, dialogues and generation.