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Data Noising as Smoothing in Neural Network Language Models

Authors :
Xie, Ziang
Wang, Sida I.
Li, Jiwei
Lévy, Daniel
Nie, Aiming
Jurafsky, Dan
Ng, Andrew Y.
Publication Year :
2017

Abstract

Data noising is an effective technique for regularizing neural network models. While noising is widely adopted in application domains such as vision and speech, commonly used noising primitives have not been developed for discrete sequence-level settings such as language modeling. In this paper, we derive a connection between input noising in neural network language models and smoothing in $n$-gram models. Using this connection, we draw upon ideas from smoothing to develop effective noising schemes. We demonstrate performance gains when applying the proposed schemes to language modeling and machine translation. Finally, we provide empirical analysis validating the relationship between noising and smoothing.<br />Comment: ICLR 2017

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1703.02573
Document Type :
Working Paper