DocumentCode
180179
Title
An autoencoder with bilingual sparse features for improved statistical machine translation
Author
Bing Zhao ; Yik-Cheung Tam ; Jing Zheng
Author_Institution
SRI Int., Menlo Park, CA, USA
fYear
2014
fDate
4-9 May 2014
Firstpage
7103
Lastpage
7107
Abstract
Though sparse features have produced significant gains over traditional dense features in statistical machine translation, careful feature selection and feature engineering are necessary to avoid over-fitting in optimizations. However, many sparse features are highly overlapping with each other; that is, they cover the same or similar information of translational equivalence from slightly different points of view, and eventually overfit easily with only very feature training samples in given bilingual stochastic context-free grammar (SCFG) rules. We propose a natural autoencoder that maps all the discrete and overlapping sparse features for each SCFG rule into a continuous vector, so that the information encoded in sparse feature vectors becomes a dense vector that may enjoy more samples during training and avoid overfitting. Our experiments showed that for a 33-million bilingual SCFG rules statistical machine translation system, the autoencoder generalizes much better than sparse features alone using the same optimization framework.
Keywords
context-free grammars; encoding; feature selection; language translation; natural language processing; optimisation; statistical analysis; SCFG rules; autoencoder; bilingual sparse features; bilingual stochastic context-free grammar; feature engineering; feature selection; feature training sample; improved statistical machine translation; optimization; overfitting avoidance; sparse feature vector; translational equivalence; Computational linguistics; Neural networks; Optimization; Principal component analysis; Training; Tuning; Vectors; PRO; SCFG grammar induction; autoencoder; machine translation; optimization; sparse features;
fLanguage
English
Publisher
ieee
Conference_Titel
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location
Florence
Type
conf
DOI
10.1109/ICASSP.2014.6854978
Filename
6854978
Link To Document