Data Augmentation for Spoken Language Understanding via Joint Variational Generation

Information

Title Data Augmentation for Spoken Language Understanding via Joint Variational Generation
Authors
Kang Min Yoo, Youhyun Shin, Sang-goo Lee
Year 2019 / 1
Keywords natural language processing, data augmentation, spoken language understanding, language generation
Publication Type International Conference
Publication Thirty-Third AAAI Confernce on Artificial Intelligence (AAAI 2019)
Link url

Abstract

Data scarcity is one of the main obstacles of domain adaptation in spoken language understanding (SLU) due to the high cost of creating manually tagged SLU datasets. Recent works in neural text generative models, particularly latent variable models such as variational autoencoder (VAE), have shown promising results in regards to generating plausible and natural sentences. In this paper, we propose a novel generative architecture which leverages the generative power of latent variable models to jointly synthesize fully annotated utterances. Our experiments show that existing SLU models trained on the additional synthetic examples achieve performance gains. Our approach not only helps alleviate the data scarcity issue in the SLU task for many datasets but also indiscriminately improves language understanding performances for various SLU models, supported by extensive experiments and rigorous statistical testing.