UniNL: Aligning Representation Learning with Scoring Function for OOD Detection via Unified Neighborhood Learning

摘要

Detecting out-of-domain (OOD) intents from user queries is essential for avoiding wrong operations in task-oriented dialogue systems. The key challenge is how to distinguish in-domain (IND) and OOD intents. Previous methods ignore the alignment between representation learning and scoring function, limiting the OOD detection performance. In this paper, we propose a unified neighborhood learning framework (UniNL) to detect OOD intents. Specifically, we design a K-nearest neighbor contrastive learning (KNCL) objective for representation learning and introduce a KNN-based scoring function for OOD detection. We aim to align representation learning with scoring function. Experiments and analysis on two benchmark datasets show the effectiveness of our method.

会议
EMNLP 2022
牟宇滔
牟宇滔
硕士研究生

任务型对话系统,自然语言理解

王霈
王霈
硕士研究生
何可清
硕士研究生

对话系统,摘要,预训练

吴亚楠
吴亚楠
硕士研究生

自然语言理解

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