ArXiv | 2021

Rethinking Perturbations in Encoder-Decoders for Fast Training

 
 

Abstract


We often use perturbations to regularize neural models. For neural encoder-decoders, previous studies applied the scheduled sampling (Bengio et al., 2015) and adversarial perturbations (Sato et al., 2019) as perturbations but these methods require considerable computational time. Thus, this study addresses the question of whether these approaches are efficient enough for training time. We compare several perturbations in sequence-to-sequence problems with respect to computational time. Experimental results show that the simple techniques such as word dropout (Gal and Ghahramani, 2016) and random replacement of input tokens achieve comparable (or better) scores to the recently proposed perturbations, even though these simple methods are faster.

Volume abs/2104.01853
Pages None
DOI 10.18653/V1/2021.NAACL-MAIN.460
Language English
Journal ArXiv

Full Text