|
Synergizing Large Language Models and Pre-Trained Smaller Models for Conversational Intent Discovery Speaker (s): LIANG Jinggui PhD Student School of Computing and Information Systems Singapore Management University
| Date: Time: Venue: | | 2 August 2024, Friday 1:30pm – 2:00pm Meeting room 4.4, Level 4 School of Computing and Information Systems 1, Singapore Management University, 80 Stamford Road, Singapore 178902 We look forward to seeing you at this research seminar. Please register by 1 August 2024.
|
|
About the Talk In Conversational Intent Discovery (CID), Small Language Models (SLMs) struggle with overfitting to familiar intents and fail to label newly discovered ones. This issue stems from their limited grasp of semantic nuances and their intrinsically discriminative framework. Therefore, we propose Synergizing Large Language Models (LLMs) with pre-trained SLMs for CID (SynCID). It harnesses the profound semantic comprehension of LLMs alongside the operational agility of SLMs. By utilizing LLMs to refine both utterances and existing intent labels, SynCID significantly enhances the semantic depth, subsequently realigning these enriched descriptors within the SLMs' feature space to correct cluster distortion and promote robust learning of representations. A key advantage is its capacity for the early identification of new intents, a critical aspect for deploying conversational agents successfully. Additionally, SynCID leverages the in-context learning strengths of LLMs to generate labels for new intents. Thorough evaluations across a wide array of datasets have demonstrated its superior performance over traditional CID methods.
This is a Pre-Conference talk for The 62nd Annual Meeting of the Association for Computational Linguistics (ACL 2024). About the Speaker LIANG Jinggui is a Ph.D. Student in Computer Science at the SMU School of Computing and Information Systems, supervised by Prof. LIAO Lizi. His research focuses on conversational understanding.
|