DocumentCode
3752280
Title
Transfer learning for speech and language processing
Author
Dong Wang;Thomas Fang Zheng
Author_Institution
Center for Speech and Language Technologies (CSLT) Research Institute of Information Technology, Tsinghua University
fYear
2015
Firstpage
1225
Lastpage
1237
Abstract
Transfer learning is a vital technique that generalizes models trained for one setting or task to other settings or tasks. For example in speech recognition, an acoustic model trained for one language can be used to recognize speech in another language, with little or no re-training data. Transfer learning is closely related to multi-task learning (cross-lingual vs. multilingual), and is traditionally studied in the name of `model adaptation´. Recent advance in deep learning shows that transfer learning becomes much easier and more effective with high-level abstract features learned by deep models, and the `transfer´ can be conducted not only between data distributions and data types, but also between model structures (e.g., shallow nets and deep nets) or even model types (e.g., Bayesian models and neural models). This review paper summarizes some recent prominent research towards this direction, particularly for speech and language processing. We also report some results from our group and highlight the potential of this very interesting research field1.
Keywords
"Data models","Speech","Adaptation models","Speech processing","Learning systems","Speech recognition","Conferences"
Publisher
ieee
Conference_Titel
Signal and Information Processing Association Annual Summit and Conference (APSIPA), 2015 Asia-Pacific
Type
conf
DOI
10.1109/APSIPA.2015.7415532
Filename
7415532
Link To Document