[Apologies for cross-postings]

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First Call for Papers

19th Workshop on Multiword Expressions (MWE 2023)

Organized and sponsored by SIGLEX, the Special Interest Group

on the Lexicon of the ACL

Full-day workshop collocated with EACL 2023, Dubrovnik, Croatia, May 2 or
6, 2023

Hybrid (on-site & on-line)

Submission deadline: February 13, 2023

MWE 2023 website: <https://multiword.org/mwe2022/>
https://multiword.org/mwe2023/

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Multiword expressions (MWEs) are word combinations that exhibit lexical,
syntactic, semantic, pragmatic, and/or statistical idiosyncrasies (Baldwin
& Kim 2010), such as by and large, hot dog, pay a visit and pull one's leg.
The notion encompasses closely related phenomena: idioms, compounds,
light-verb constructions, phrasal verbs, rhetorical figures, collocations,
institutionalised phrases, etc. Their behaviour is often unpredictable; for
example, their meaning often does not result from the direct combination of
the meanings of their parts. Given their irregular nature, MWEs often pose
complex problems in linguistic modelling (e.g. annotation), NLP tasks (e.g.
parsing), and end-user applications (e.g. natural language understanding
and MT), hence still representing an open issue for computational
linguistics (Constant et al. 2017).

For almost two decades, modelling and processing MWEs for NLP has been the
topic of the MWE workshop organised by the MWE section
<https://multiword.org/> of SIGLEX <http://www.siglex.org/> in conjunction
with major NLP conferences since 2003. Impressive progress has been made in
the field, but our understanding of MWEs still requires much research
considering their need and usefulness in NLP applications. This is also
relevant to domain-specific NLP pipelines that need to tackle terminologies
most often realised as MWEs. Following previous years, for this 19th
edition of the workshop, we identified the following topics on which
contributions are particularly encouraged:


   -

   MWE processing and identification in specialized languages and domains:
   Multiword terminology extraction from domain-specific corpora (Bonin et al.
   2010) is of particular importance to various applications, such as MT
   (Semmar & Laib, 2017), or for the identification and monitoring of
   neologisms and technical jargon (Chatzitheodorou et al, 2021).  We expect
   approaches that deal with the processing of MWEs as well as the processing
   of terminology in specialised domains can benefit from each other.
   -

   MWE processing to enhance end-user applications: MWEs have gained
   particular attention in end-user applications, including MT (Zaninello &
   Birch 2020; Han et al. 2021), simplification (Kochmar et al. 2020),
   language learning and assessment (Paquot et al. 2019; Christiansen & Arnon
   2017), social media mining (Maisto et al. 2017), and abusive language
   detection (Zampieri et al. 2020; Caselli et al. 2020). We believe that it
   is crucial to extend and deepen these first attempts to integrate and
   evaluate MWE technology in these and further end-user applications.
   -

   MWE identification and interpretation in pre-trained language models: Most
   current MWE processing is limited to their identification and detection
   using pre-trained language models, but we still lack understanding about
   how MWEs are represented and dealt with therein (Nedumpozhimana & Kelleher
   2021; Garcia et al. 2021, Fakharian & Cook 2021), how to better model the
   compositionality of MWEs from semantics (Moreau et al. 2018). Now that NLP
   has shifted towards end-to-end neural models like BERT, capable of solving
   complex tasks with little or no intermediary linguistic symbols, questions
   arise about the extent to which MWEs should be implicitly or explicitly
   modelled (Shwartz & Dagan, 2019).
   -

   MWE processing in low-resource languages: The PARSEME shared tasks
   (Ramisch et al. 2020; 2018; Savary et al. 2017), among others, have
   fostered significant progress in MWE identification, providing datasets
   that include low-resource languages, evaluation measures, and tools that
   now allow fully integrating MWE identification into end-user applications.
   A few efforts have recently explored methods for the automatic
   interpretation of MWEs (Bhatia, et al. 2018; 2017), and their processing in
   low-resource languages (Liu & Wang 2020; Kumar et al. 2017). Resource
   creation and sharing should be pursued in parallel with the development of
   methods able to capitalize on small datasets (Han et al. 2020).


Through this workshop, we would like to bring together and encourage
researchers in various NLP subfields to submit MWE-related research, so
that approaches that deal with processing of MWEs including processing for
low-resource languages and for various applications can benefit from each
other. We also intend to consolidate the converging effects of previous
joint workshops LAW-MWE-CxG 2018
<http://multiword.sourceforge.net/lawmwecxg2018/>, MWE-WN 2019
<http://multiword.sourceforge.net/mwewn2019/> and MWE-LEX 2020
<http://multiword.sourceforge.net/mwelex2020/>, the joint MWE-WOAH panel in
2021 <https://multiword.org/mwe2021/#program>, and the MWE-SIGUL 2022 joint
session <https://multiword.org/mwe2022/>, extending our scope to MWEs in
e-lexicons and WordNets, MWE annotation, as well as grammatical
constructions. Correspondingly, we call for papers on research related (but
not limited) to MWEs and constructions in:


   -

   Computationally-applicable theoretical work in psycholinguistics and
   corpus linguistics;
   -

   Annotation (expert, crowdsourcing, automatic) and representation in
   resources such as corpora, treebanks, e-lexicons, and WordNets (also for
   low-resource languages);
   -

   Processing in syntactic and semantic frameworks (e.g. CCG, CxG, HPSG,
   LFG, TAG, UD, etc.);
   -

   Discovery and identification methods, including for specialized
   languages and domains such as clinical or biomedical NLP;
   -

   Interpretation of MWEs and understanding of text containing them;
   -

   Language acquisition, language learning, and non-standard language (e.g.
   tweets, speech);
   -

   Evaluation of annotation and processing techniques;
   -

   Retrospective comparative analyses from the PARSEME shared tasks;
   -

   Processing for end-user applications (e.g. MT, NLU, summarisation,
   language learning, etc.);
   -

   Implicit and explicit representation in pre-trained language models and
   end-user applications;
   -

   Evaluation and probing of pre-trained language models;
   -

   Resources and tools (e.g. lexicons, identifiers) and their integration
   into end-user applications;
   -

   Multiword terminology extraction;
   -

   Adaptation and transfer of annotations and related resources to new
   languages and domains including low-resource ones.


Shared Task

We do not have a shared task this year, but a new release of the PARSEME
corpus of verbal MWEs is currently underway. We encourage submission of
research papers that include analyses of the new edition of the PARSEME
data and improvements over the results for PARSEME 2020 shared task as well
as SemEval 2022 task 2 on idiomaticity prediction.

Submission formats:

The workshop invites  two types of submissions:


   -

   archival submissions that present substantially original research in
   both long paper format (8 pages + references) and short paper format (4
   pages + references).
   -

   non-archival submissions of abstracts describing relevant research
   presented/published elsewhere which will not be included in the MWE
   proceedings.


Paper submission and templates

Papers should be submitted via the workshop's START submission page (TBD).
Please choose the appropriate submission format (archival/non-archival).
Archival papers with existing reviews will also be accepted through the ACL
Rolling Review. Submissions must follow the ACL 2023 stylesheet
<https://2023.aclweb.org/calls/style_and_formatting/>.

Important Dates

Paper Submission Deadline: February 13, 2023

Notification of acceptance: March 13, 2023

Camera-ready papers due: March 27, 2023

Workshop: May 2 or 6, 2023

All deadlines are at 23:59 UTC-12 (Anywhere on Earth).

Organizing Committee

Program chairs: Marcos Garcia, Voula Giouli, Lifeng Han, Shiva Taslimipoor

Publication chair: Archna Bhatia

Publicity chair: Kilian Evang

Anti-harassment policy

The workshop follows the ACL anti-harassment policy
<https://www.aclweb.org/adminwiki/index.php?title=Anti-Harassment_Policy>.

Contact

For any inquiries regarding the workshop, please send an email to the
Organizing Committee at mweworkshop2...@googlegroups.com.


-- 

*News*: ClinicalMT
<https://scholar.google.com/citations?view_op=view_citation&hl=en&user=_vf3E2QAAAAJ&sortby=pubdate&citation_for_view=_vf3E2QAAAAJ:4fGpz3EwCPoC>@WMT22,
Meta-eval Tutorial
<https://scholar.google.com/scholar?oi=bibs&hl=en&cluster=5418617987092956707>
/
HumanEval <https://aclanthology.org/2022.lrec-1.2.pdf> /
TranslationUncertainty <https://aclanthology.org/2022.lrec-1.2.pdf>
@LREC22, ClinicalTextMinging <https://github.com/poethan/TransformerCRF>
@HealTAC22

Ph.D. in Computer Application (Machine Translation, thesis
<https://doras.dcu.ie/26559/>), M.Sc. (Software Engineering, thesis
<https://arxiv.org/abs/1703.08748> *excellent-award*), B.Sc. (Math, *GPA
80/100*)

Google-Scholar <https://scholar.google.nl/citations?user=_vf3E2QAAAAJ&hl=en> ,
Presentation <https://www.slideshare.net/AaronHanLiFeng>(ppt),
Research-Gate <https://www.researchgate.net/profile/Aaron_L-F_Han>

Google-site <https://sites.google.com/view/poetgarden/home> Linkedin
<https://www.linkedin.com/in/aaronhan/>, Writer
<https://books.apple.com/us/author/lifeng-han/id1602229739>(poetry)

Postdoctoral <https://www.research.manchester.ac.uk/portal/lifeng.han.html>
Research Associate at HECTA
<https://www.research.manchester.ac.uk/portal/en/researchers/goran-nenadic(4563fc16-68b4-46f5-a28e-5c67a2cab488)/mygroup.html>
group, The University of Manchester, UK

https://www.research.manchester.ac.uk/portal/lifeng.han.html Former: ADAPT
Research Centre & DCU, Ireland
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