***** Journal of Natural Language Engineering - Special Issue on “Machine 
Translation Using Comparable Corpora” *****

CALL FOR PAPERS

Statistical machine translation based on parallel corpora has been very 
successful. The major search engines' translation systems, which are used by 
millions of people, are primarily using this approach, and it has been possible 
to come up with new language pairs in a fraction of the time that would be 
required when using more traditional rule-based methods.

In contrast, research on comparable corpora is still at an earlier stage. 
Comparable corpora can be defined as monolingual corpora covering roughly the 
same subject area in different languages but without being exact translations 
of each other.

However, despite its tremendous success, the use of parallel corpora in MT has 
a number of drawbacks:

1) It has been shown that translated language is somewhat different from 
original language, for example Klebanov & Flor showed that "associative 
texture" is lost in translation. 

2) As they require translation, parallel corpora will always be a far scarcer 
resource than comparable corpora. This is a severe drawback for a number of 
reasons:

a) Among the about 7000 world languages, of which 600 have a written form, the 
vast majority are of the "low resource" type.

b) The number of possible language pairs increases with the square of the 
number of languages. When using parallel corpora, one bitext is needed for each 
language pair. When using comparable corpora, one monolingual corpus per 
language suffices.

c) For improved translation quality, translation systems specialized on 
particular genres and domains are desirable. But it is far more difficult to 
acquire appropriate parallel rather than comparable training corpora.

d) As language evolves over time, the training corpora should be updated on a 
regular basis. Again, this is more difficult in the parallel case.

For such reasons it would be a big step forward if it were possible to base 
statistical machine translation on comparable rather than on parallel corpora: 
The acquisition of training data would be far easier, and  the unnatural 
"translation bias" (source language shining through) within the training data 
could be avoided.

But is there any evidence that this is possible? Motivation for using 
comparable corpora in MT research comes from a cognitive perspective: 
Experience tells that persons who have learned a second language completely 
independently from their mother tongue can nevertheless translate between the 
languages. That is, human performance shows that there must be a way to bridge 
the gap between languages which does not rely on parallel data. Using parallel 
data for MT is of course a nice shortcut. But avoiding this shortcut by doing 
MT based on comparable corpora may well be a key to a better understanding of 
human translation, and to better MT quality.

Work on comparable corpora in the context of MT has been ongoing for almost 20 
years. It has turned out that this is a very hard problem to solve, but as it 
is among the grand challenges in multilingual NLP, interest has steadily 
increased. Apart from the increase in publications this can be seen from the 
considerable number of research projects (such as ACCURAT and TTC) which are 
fully or partially devoted to MT using comparable corpora. Given also the 
success of the workshop series on “Building and Using Comparable Corpora“ 
(BUCC), which is now in its seventh year, and following the publication of a 
related book (http://www.springer.com/computer/ai/book/978-3-642-20127-1), we 
think that it is now time to devote a journal special issue to this field. It 
is meant to bundle the latest top class research, make it available to 
everybody working in the field, and at the same time give an overview on the 
state of the art to all interested researchers.


TOPICS OF INTEREST

We solicit contributions including but not limited to the following topics:

• Comparable corpora based MT systems (CCMTs)
• Architectures for CCMTs
• CCMTs for less-resourced languages
• CCMTs for less-resourced domains
• CCMTs dealing with morphologically rich languages
• CCMTs for spoken translation
• Applications of CCMTs
• CCMT evaluation
• Open source CCMT systems
• Hybrid systems combining SMT and CCMT
• Hybrid systems combining rule-based MT and CCMT 
• Enhancing phrase-based SMT using comparable corpora
• Expanding phrase tables using comparable corpora
• Comparable corpora based processing tools/kits for MT
• Methods for mining comparable corpora from the Web
• Applying Harris' distributional hypothesis to comparable corpora
• Induction of morphological, grammatical, and translation rules from 
comparable corpora
• Machine learning techniques using comparable corpora
• Parallel corpora vs. pairs of non-parallel monolingual corpora
• Extraction of parallel segments or paraphrases from comparable corpora
• Extraction of bilingual and multilingual translations of single words and 
multi-word expressions, proper names, and named entities from comparable corpora


IMPORTANT DATES
 
December 1, 2014: Paper submission deadline
February 1, 2015: Notification
May 1, 2015: Deadline for revised papers
July 1, 2015: Final notification
September 1, 2015: Final paper due


GUEST EDITORS

Reinhard Rapp, Universities of Aix Marseille (France) and Mainz (Germany)
Serge Sharoff, University of Leeds (UK)
Pierre Zweigenbaum, LIMSI, CNRS (France)


FURTHER INFORMATION

Please use the following e-mail address to contact the guest editors: jnle.bucc 
(at) limsi (dot) fr

Further details on paper submission will be made available in due course at the 
BUCC website: http://comparable.limsi.fr/bucc2014/bucc-introduction.html
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