2021
DOI: 10.48550/arxiv.2106.14464
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Enhancing the Generalization for Intent Classification and Out-of-Domain Detection in SLU

Abstract: Intent classification is a major task in spoken language understanding (SLU). Since most models are built with pre-collected in-domain (IND) training utterances, their ability to detect unsupported out-of-domain (OOD) utterances has a critical effect in practical use. Recent works have shown that using extra data and labels can improve the OOD detection performance, yet it could be costly to collect such data. This paper proposes to train a model with only IND data while supporting both IND intent classificati… Show more

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