Rethinking Perturbations in Encoder-Decoders for Fast Training
Sho Takase, Shun Kiyono
Abstract
We often use perturbations to regularize neural models. For neural encoder-decoders, previous studies applied the scheduled sampling 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. Our code is publicly available at https://github.com/takase/rethink_perturbations.
Topics & Concepts
Computer scienceEncoderSequence (biology)Simple (philosophy)Decoding methodsAlgorithmDropout (neural networks)Computational complexity theoryArtificial intelligenceSpeech recognitionMachine learningPhilosophyOperating systemBiologyEpistemologyGeneticsNatural Language Processing TechniquesTopic ModelingAdversarial Robustness in Machine Learning