CALL FOR PAPERS
Special Issue of Machine Translation on NLP in Low-Resource Languages
 
[This final call includes submission details!]

Developing capabilities to extract information from a new language has 
traditionally been a very concerted, slow, and costly process due to high 
dependency on large, manually annotated data resources. The DARPA LORELEI 
program seeks to advance technologies that are less dependent on large data 
resources and that can be quickly pivoted to new languages within a very short 
amount of time so that information from any language can be extracted in timely 
manner to provide situation awareness to emergent incidents.

A special evaluation workshop, LoReHLT, was started by NIST in 2016 to support 
research on low-resource language NLP.  In this evaluation, there is no 
training data in the evaluation language.  Participants receive training data 
in related languages, but need to bootstrap systems in the surprise evaluation 
language at the start of the evaluation.  Methods for this include pivoting 
approaches and taking advantage of linguistic universals.
 
This special journal issue looks to document promising new techniques developed 
in the LORELEI program as well as ideas and methods developed in the wider 
research community that target information extraction from low resource 
languages with a special focus on techniques that work across many languages, 
are less dependent on large data resources, take advantage of language 
universal resources, pivot from existing language resources to new incident 
languages, or bootstrap training resources for short development cycle. Of 
special interest are in the following areas:

  * Machine translation
  * Entities, relations, events extraction
  * Sentiment detection
  * Summarization
  * Identifying locations mentioned in text
  * Processing multiple genres (news, social media, conversational text…) 

IMPORTANT DATES:
May 31, 2017: Paper submission due
June 30, 2017: Notification of acceptance
July 26, 2017: Camera ready paper due

SUBMISSION GUIDELINES:
  * Authors should follow the "Instructions for Authors" available on the MT 
Journal website:
    o Go to http://www.springer.com/computer/artificial/journal/10590
    o Click on “Instructions for authors” on the right
    o Expand “Text” and you will see a Latex template
  * Length of paper is determined by total of submissions received. We 
recommend around 15 pages.
  * Papers should be submitted online directly on the MT journal's submission 
website: http://www.editorialmanager.com/coat/default.asp and select “Special 
Issue on NLP in Low Resource Languages”

EDITORIAL COMMITTEE:
Ian Soboroff (NIST)
Audrey Tong (NIST)
Heng Ji (RPI)
Kevin Knight (ISI)
Lane Schwartz (UIUC)
Timothy Miller (UIUC)
Chen-Tse Tsai (UIUC)
Stephen Mayhew (UIUC)
Chao-Hong Liu (ADAPT)
Haithem Afli (ADAPT)
Iacer Calixto (ADAPT)
Longyue Wang (DCU)
Alberto Poncelas (DCU)
Jason Duncan (MITRE)
Ralph Weischedel (BBN)
Marjorie Freedman (BBN)



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