FIRST CALL FOR PAPERS

Workshop on Applying Machine Learning techniques to optimising
the division of labour in Hybrid MT (ML4HMT)

Conference: Machine Translation Summit XIII (MT Summit XIII)

URL: http://www.dfki.de/ml4hmt/

Workshop Purpose and Theme
==========================

The workshop will explore alternatives in order to provide optimal support
for Hybrid
MT design, using sophisticated machine-learning techniques. One further
important
objective of the workshop is to build bridges from MT to the ML community to
systematically and jointly explore the choice space for Hybrid MT.

Workshop Programme
==================

The workshop will open with an invited talk (speaker TBA), followed by two
technical
paper sessions and a challenge or shared task session, and will conclude
with a
discussion panel.

Topics of Interest of the Technical Papers
==========================================

Topics of interests include, but are not limited to:

    -use of Machine Learning techniques in combination / hybridization of
Machine
     Translation systems

    -using richer linguistic information in phrase-based SMT (e.g. in
factored models
     or hierarchical SMT)

    -using phrases from different types of MT in e.g. phrase-based SMT

    -system combination approaches, either parallel in multi-engine MT
(MEMT) or
     sequential in statistical post-editing (SPMT)

    -learning resources (e.g. transfer rules, transduction grammars) for
probabilistic
     rule-based MT

All contributions will be published in the workshop proceedings.


Shared Task Description
=======================

The "Shared Task on Optimising the Division of Labour in Hybrid MT " is an
effort to
trigger systematic investigation on improving state-of-the-art Hybrid MT,
using
advanced machine-learning (ML) methodologies. Participants are requested
to build
Hybrid/System Combination systems by combining the output of several
systems of
different types, which is provided by the organizers.

The main focus of the shared task is trying to answer the following question:

Could Hybrid/System Combination MT techniques benefit from extra
information (linguistically motivated, decoding and runtime) from the
different systems involved?


* Data: The participants are given a development bilingual set, aligned at a
  sentence level. Each "bilingual sentence" contains:
   -the source sentence,

   -the target (reference) sentence and

   -the corresponding multiple output translations from 5 different systems,
    based on different MT approaches (Apertium, Ramírez-Sanchéz, 2006;
    Joshua, Zhifei Li et al, 2009; Lucy, Alonso and Thurmair, 2003; Matrex,
    Penkale et. al 2010) Metis, Vandeghinste et al., 2006). The output has
been
    annotated with system-internal information deriving from the translation
    process of each of the systems (see below).

* Baseline: As a baseline we consider state-of-the-art open-source system-
  combination systems, such as MANY (Barrault, 2010) and CMU-MEMT
  (Heafierld & Lavie, 2010).

* Challenge: Participants are challenged to build an MT mechanism that
   improves over the baseline, by making effective use of the
system-specific MT
   output. They can either provide solutions based on an open source
system, or
   develop their own mechanisms. A suggested approach is given below.

  -Spanish-English will be the language direction

  -The development set can be used for tuning the systems during the
   development phase. Final submissions have to include translation output on
   a test set, which will be available one week before the submission
deadline

  -If you need language/reordering models they can be built upon the WMT
   News Commentary (http://www.statmt.org/wmt11/).

  -Participants can also make use of additional linguistic analysis tools,
if their
   systems require so, but they have to explicitly declare that upon
submission,
   so that they are judged as "unconstrained" systems.

* Evaluation: The system output will be judged via peer-based human
  evaluation. During the evaluation phase, participants will be requested
to rank
  system outputs of other participants through a web-based interface
(Appraise;
  Federmann 2010). Automatic metrics (BLEU, Papineni et. al, 2002) will be
  additionally used.

* System description: shared task participants will be invited to submit
short
  papers (4-6 pages) describing their systems or their evaluation metrics
(see
  instructions in Submissions).

Important Dates
===============

* May 20th – Release of data for the challenge

* July 20th - Paper Submissions due / Challenge results due

* August 10th – Author notification / Release of challenge evaluation results

* August 19th - Final version due

Submissions
===========

Technical papers and system description papers should follow the main
conference
formatting requirements
(http://mt.xmu.edu.cn/mtsummit/SubmitPapers.html#). To
submit contributions, please follow the instructions at the Workshop
management
system submission website:
https://www.easychair.org/account/signin.cgi?conf=ml4hmt.

The contributions will undergo a double-blind review by members of the
programme
committee. Please address queries to [email protected].

Organization
============

Chair: Toni Badia (Pompeu Fabra University, Spain)

Co-chairs: Christian Federmann (German Research Center for Artificial
Intelligence,
Germany), Josef van Genabith (Dublin City University, Ireland)

Committee members
=================

Maite Melero (Barcelona Media Innovation Center, Spain), Marta R. Costa-jussà
(Barcelona Media Innovation Center, Spain), Pavel Pecina (Dublin City
University,
Ireland), Eleftherios Avramadis (German Research Center for Artificial
Intelligence,
Germany)


Program Committee
=================

Eleftherios Avramadis (German Research Center for Artificial Intelligence,
Germany)
Rafael Banchs (Institute for Infocomm Reserarch - I2R, Singapore)
Loïc Barrault (LIUM - University of Le Mans, France)
Chris Callison-Burch (Johns Hopkins University, MD, USA)
Jinhua Du (Faculty of Automation and Information Engineering, Xi'an
University of
Technology, Xi'an, China)
Andreas Eisele (Saarland University, Germany)
Cristina España-Bonet (Technical University of Catalonia, TALP, Barcelona)
Patrick Lambert (LIUM - University of Le Mans, France)
Maite Melero (Barcelona Media Innovation Center, Spain)
Pavel Pecina (Dublin City University, Ireland)
Marta R. Costa-jussà (Barcelona Media Innovation Center, Spain)
David Vilar (German Research Center for Artificial Intelligence, Germany)

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