Discovering New Intents via Constrained Deep Adaptive Clustering with Cluster Refinement

Abstract

Identifying new user intents is an essential task in the dialogue system. However, it is hard to get satisfying clustering results since the definition of intents is strongly guided by prior knowledge. Existing methods incorporate prior knowledge by intensive feature engineering, which not only leads to overfitting but also makes it sensitive to the number of clusters. In this paper, we propose constrained deep adaptive clustering with cluster refinement (CDAC+), an end-to-end clustering method that can naturally incorporate pairwise constraints as prior knowledge to guide the clustering process. Moreover, we refine the clusters by forcing the model to learn from the high confidence assignments. After eliminating low confidence assignments, our approach is surprisingly insensitive to the number of clusters. Experimental results on the three benchmark datasets show that our method can yield significant improvements over strong baselines.

Publication
Association for the Advancement of Artificial Intelligence (CCF A类会议)
Tingen Lin
Master’s Degree

Joined the team in 2017, obtained a master’s degree in 2020, and an outstanding master’s degree graduate of the Department of Computer Science,Tsinghua University.

Hua Xu
Hua Xu
Tenured Associate Professor, Associate Editor of Expert Systems with Application, Ph.D Supervisor
Hanlei Zhang
Hanlei Zhang
Ph.D Student

My research direction is multimodal dialogue intention discovery.