Code-switching Sentence Generation
by Generative Adversarial Networks and its Application to Data Augmentation
Ching-Ting Chang,
Shun-Po Chuang,
Hung-Yi Lee
Graduate Institute of Communication Engineering, National Taiwan University
ABSTRACT
Code-switching is about dealing with alternative languages in speech or text.
It is partially speaker-depend and domain-related, so completely explaining the phenomenon by linguistic rules is challenging.
Compared to monolingual tasks, insufficient data is an issue for code-switching.
To mitigate the issue without expensive human annotation, we proposed an unsupervised method for code-switching data augmentation.
By utilizing a generative adversarial network, we can generate intra-sentential code-switching sentences from monolingual sentences.
We applied proposed method on two corpora, and the result shows that the generated code-switching sentences improve the performance of code-switching language models.