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  4. Cross-lingual Transfer for News Article Labeling: Benchmarking Statistical and Neural Models
 
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Cross-lingual Transfer for News Article Labeling: Benchmarking Statistical and Neural Models

Mrini, Khalil  
•
Pappas, Nikolaos  
•
Popescu-Belis, Andrei  
2017

Cross-lingual transfer has been shown to increase the performance of a text classification model thanks to the use of Multilingual Hierarchical Attention Networks (MHAN), on which this work is based. Firstly, we compared the performance of monolingual and mulitilingual HANs with three types of bag-of-words models. We found that the Binary Unigram model outperforms the HAN model with Dense encoders on the full vocabulary in 6 out of 8 languages, and ties against MHAN with the Dense encoders, when it uses the full vocabulary i.e. many more parameters than neural models. However, this is not true when we limit the number of parameters and (or) we increase the sophistication of the neural encoders to GRU or biGRU. Secondly, new configurations of parameter sharing were tested. We found that sharing attention at the sentence level was the best configuration by a small margin when transferring from 5 out of 7 languages to English, as well as for cross-lingual transfer between English and Spanish, Russian, and Arabic. The tests were performed on the Deutsche Welle news corpus with 8 languages and 600k documents.

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Type
report
Author(s)
Mrini, Khalil  
Pappas, Nikolaos  
Popescu-Belis, Andrei  
Date Issued

2017

Publisher

Idiap

Subjects

document labeling

•

multilingual hierarchical networks

Note

Report of EPFL semester project done by Khalil Mrini (1st year I&C MSc student), supervised by N. Pappas and A. Popescu-Belis.

Written at

EPFL

EPFL units
LIDIAP  
Available on Infoscience
September 19, 2017
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/140718
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