CLApr 16, 2022

Learning to Classify Open Intent via Soft Labeling and Manifold Mixup

arXiv:2204.07804v223 citationsh-index: 16Has Code
AI Analysis

This addresses the problem of detecting unknown intents in dialogue systems for improved robustness, representing an incremental advance over existing outlier-based methods.

The paper tackles open intent classification in dialogue systems by training a (K+1)-class classifier directly, using soft labeling to reduce overconfidence on known intents and manifold mixup to generate pseudo-samples for open intents, achieving state-of-the-art performance on four benchmark datasets.

Open intent classification is a practical yet challenging task in dialogue systems. Its objective is to accurately classify samples of known intents while at the same time detecting those of open (unknown) intents. Existing methods usually use outlier detection algorithms combined with K-class classifier to detect open intents, where K represents the class number of known intents. Different from them, in this paper, we consider another way without using outlier detection algorithms. Specifically, we directly train a (K+1)-class classifier for open intent classification, where the (K+1)-th class represents open intents. To address the challenge that training a (K+1)-class classifier with training samples of only K classes, we propose a deep model based on Soft Labeling and Manifold Mixup (SLMM). In our method, soft labeling is used to reshape the label distribution of the known intent samples, aiming at reducing model's overconfident on known intents. Manifold mixup is used to generate pseudo samples for open intents, aiming at well optimizing the decision boundary of open intents. Experiments on four benchmark datasets demonstrate that our method outperforms previous methods and achieves state-of-the-art performance. All the code and data of this work can be obtained at https://github.com/zifengcheng/SLMM.

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