Code-switched Language Models Using Dual RNNs and Same-Source Pretraining

09/06/2018
by   Saurabh Garg, et al.
0

This work focuses on building language models (LMs) for code-switched text. We propose two techniques that significantly improve these LMs: 1) A novel recurrent neural network unit with dual components that focus on each language in the code-switched text separately 2) Pretraining the LM using synthetic text from a generative model estimated using the training data. We demonstrate the effectiveness of our proposed techniques by reporting perplexities on a Mandarin-English task and derive significant reductions in perplexity.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset