Adversarial Generative Distance-Based Classifier for Robust Out-of-Domain Detection

Abstract

Detecting out-of-domain (OOD) intents is critical in a task-oriented dialog system. Existing methods rely heavily on extensive manually labeled OOD samples and lack robustness. In this paper, we propose an efficient adversarial attack mechanism to augment hard OOD samples and design a novel generative distance-based classifier to detect OOD samples instead of a traditional threshold-based discriminator classifier. Experiments on two public benchmark datasets show that our method can consistently outperform the baselines with a statistically significant margin.

Publication
ICASSP 2021
Zhiyuan Zeng
Zhiyuan Zeng
Postgraduate Student

Spoken Language Understanding, Text Generation

Hong Xu
Postgraduate Student

Natual Language Processing, Intent Detection

Keqing He
Postgraduate Student

Dialogue System, Summarization, Pre-training Language Model

Yuanmeng Yan
Yuanmeng Yan
Postgraduate Student

Spoken Language Understanding, Pre-training Language Model

Sihong Liu
Postgraduate Student

Dialogue system, Policy learning

Zijun Liu
Zijun Liu
Postgraduate Student

Task-oriented Dialogue System

Weiran Xu
Weiran Xu
Associate Professor, Master Supervisor, Ph.D Supervisor

Information Retrieval, Pattern Recognition, Machine Learning