Dear Colleagues
I am writing to advertise a new PhD position in Translation Studies and
Lexicography at Innsbruck University.
All details (German and English) and the link for applying are at
https://lfuonline.uibk.ac.at/public/karriereportal.details?asg_id_in=13221
Kind regards,
Laura Giacomini
--
Univ.-Prof. Dr. Laura Giacomini
Institut für Translationswissenschaft
Herzog-Siegmund-Ufer 15
A-6020 Innsbruck
Special Issue:
Current Trends in Natural Language Processing (NLP) and Human Language Technology (HLT)
MATHEMATICS
NEW IMPACT FACTOR 2.592
An Open Access Journal by MDPI
link: https://www.mdpi.com/journal/mathematics
Guest Editor:
* Florentina Hristea, University of Bucharest
Deadline for manuscript submissions: April 23, 2023
Accepted papers are published continuously in the journal (as soon as accepted).
Message from the Guest Editor and Special Issue Web page:
https://www.mdpi.com/si/mathematics/NLP_HLT
A guide for authors and other relevant information for submission of manuscripts is available on the Instructions for Authors<https://www.mdpi.com/journal/mathematics/instructions> page.
For further information and questions, please contact:
Florentina Hristea
University of Bucharest
fhristea(a)fmi.unibuc.ro
https://cs.unibuc.ro/~fhristea/
[apologies for x-posting]
Call for Papers and Extended Abstracts
Workshop on RESOURCEs and representations For Under-resourced Languages and domains (RESOURCEFUL-2023)
collocated with the 24th Nordic Conference on Computational Linguistics (NoDaLiDa)
Norðurlandahúsið - The Nordic House in Tórshavn, Faroe Islands
22nd May 2023
https://resourceful-workshop.github.io/resourceful-2023/
Important dates:
- Submission deadline (both papers and abstracts): 28th March 2023
- Notification of acceptance: 25th April 2023
- Camera-ready version: 9th May 2023
- Workshop date: 22nd May 2023
All deadlines are 11:59PM UTC-12:00 ("anywhere on Earth").
Workshop description
The second workshop on resources and representations for under-resourced language and domains (RESOURCEFUL-2023) explores the role of the kind and the quality of resources that are available to us and challenges and directions for constructing new resources in light of the latest trends in natural language processing.
Data-driven machine-learning techniques in natural language processing have achieved remarkable performance (e.g., BERT, GPT, ChatGPT) but in order to do so large quantities of quality data (which is mostly text) is required. Interpretability studies of large language models in both text-only and multi-modal setups have revealed that even in cases where large text datasets are available, the models still do not cover all the contexts of human social activity and are prone to capturing unwanted bias where data is focused towards only some contexts. A question has also been raised whether textual data is enough to capture semantics of natural language processing and other modalities such as visual representations or a situated context of a robot might be required. Annotator-based resources have been constructed over years based on theoretical work in linguistics, psychology and related fields and a large amount of work has been done both theoretically and practically.
The purpose of the workshop is to initiate a discussion between the two communities involved in building resources (data vs annotation-based) and exploring their synergies for the new challenges in natural language processing. We encourage contributions in the areas of resource creation, representation learning and interpretability in data-driven and expert-driven machine learning setups and both uni-modal and multi-modal scenarios.
In particular we would like to open a forum by bringing together students, researchers, and experts to address and discuss the following questions:
- What is relevant linguistic knowledge the models should capture and how can this knowledge be sampled and extracted in practice?
- What kind of linguistic knowledge do we want and can capture in different contexts and tasks?
- To what degree are resources that have been traditionally aimed at rule-based natural language processing approaches relevant today both for machine learning techniques and hybrid approaches?
- How can they be adapted for data-driven approaches?
- To what degree data-driven approaches can be used to facilitate expert-driven annotation?
- What are current challenges for expert-based annotation?
- How can crowd-sourcing and citizen science be used in building resources?
- How can we evaluate and reduce unwanted biases?
Intended participants are researchers, PhD students and practitioners from diverse backgrounds (linguistics, psychology, computational linguistics, speech, computer science, machine learning, computer vision etc). We foresee an interactive workshop with plenty of time for discussion, complemented with invited talks and presentations of on-going or completed research.
This workshop is a continuation of the first workshop on resources and representations for under-resourced languages and domains held together with the SLTC 2020, https://gu-clasp.github.io/resourceful-2020/.
Submission
We invite submissions of both long (8 pages) and short papers (4 pages) with any number of pages for references. All submissions must follow the NoDaLida template, available in both LaTeX and MS Word, the templates are available at the official conference website, https://www.nodalida2023.fo/authorkit-nodalida23 Submissions must be anonymous and submitted in the PDF format through OpenReview.
We also invite submissions of maximum 2-page extended non-anonymous abstracts with any number of pages for references describing work in progress, negative results and opinion pieces. Papers related to our theme and already presented at other venues or have already been published elsewhere will be considered for acceptance for presentation as well. The abstracts, which should follow the same formatting templates as the archival track, will be reviewed by the workshop organisers and the accepted ones will be posted on the workshop website.
Workshop organisers
Dana Dannélls, Språkbanken Text, University of Gothenburg
Simon Dobnik, CLASP, University of Gothenburg
Adam Ek, CLASP, University of Gothenburg
Stella Frank, University of Copenhagen
Nikolai Ilinykh, CLASP, University of Gothenburg
Beáta Megyesi, Uppsala University
Felix Morger, Språkbanken Text, University of Gothenburg
Joakim Nivre, RISE and Uppsala University
Magnus Sahlgren, AI Sweden
Sara Stymne, Uppsala University
Jörg Tiedemann, University of Helsinki
Lilja Øvrelid, University of Oslo
resourceful-2023(a)listserv.gu.se
********************************************************************************
Second 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
NEW: ARR commitment deadline: March 6, 2023
NEW: Special track on MWEs in Clinical NLP (see below)
NEW: Best paper award (see below)
MWE 2023 website: https://multiword.org/mwe2023/
********************************************************************************
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 of SIGLEX 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, MWE-WN 2019 and MWE-LEX 2020, the joint
MWE-WOAH panel in 2021, and the MWE-SIGUL 2022 joint session, 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.
*** Special Track on MWEs in Clinical NLP ***
Pursuing the MWE Section’s tradition of synergies with other communities,
this year, we are organizing a joint session with the Clinical NLP workshop
for shared papers/poster presentations. Since clinical texts contain an
important amount of multiword expressions (e.g. medical terms or
domain-specific collocations), a joint session is deemed beneficial for
both communities. The goal is to foster future synergies that could address
scientific challenges in the creation of resources, models and applications
to deal with multiword expressions and related phenomena in the specialised
domain of ClinicalNLP. Submissions describing research on MWEs in the
specialized domain of ClinicalNLP, especially introducing new datasets or
new tools and resources, are welcome. Papers accepted in this track will
have the option to present their work in the Clinical NLP workshop at ACL
2023 as well, after being presented at MWE 2023.
Best paper award
All full papers in the workshop will be considered by the program committee
for a best paper award.
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 (link
will be provided once available). 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.
Archival papers with existing reviews from ACL Rolling Review will also be
considered. A paper may not be simultaneously under review through ARR and
MWE. A paper that has or will receive reviews through ARR may not be
submitted for review to MWE.
Important Dates
Paper submission: February 13, 2023
ARR paper commitment: March 6, 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.
Contact
For any inquiries regarding the workshop, please send an email to the
Organizing Committee at mweworkshop2023(a)googlegroups.com.
We are delighted to announce that we have released the consolidated version
of the Chilean Waiting List corpus. This dataset comprises 9,000 clinical
referrals in Spanish, annotated with ten entity types (almost half nested),
relations, and attributes. For more details, refer to the papers published
at ACM Healthcare (https://lnkd.in/dJskpprV) and EMNLP conference (
https://lnkd.in/dPt6RFsj). The corpus is available through the following
resources:
1. Zenodo (https://lnkd.in/dWfF_Cj6): Here, we make available the corpus in
its original version (the referrals in text file format and the annotations
following the standoff format). In addition, we transformed these files
into the CoNLL format, which is the most suitable format for performing NER
experiments.
2. Papers with code (https://lnkd.in/dsAw3Npt): This page contains the
benchmark of the dataset, including references to the NER models tested to
date. In particular, we published our corpus’s first results regarding the
Nested Named Entity Recognition task. The results were published at
COLING’s main conference. Please refer to the following link:
https://lnkd.in/dHnnA3aV.
3. Hugging Face (https://huggingface.co/plncmm): To facilitate the testing
of transformer-based models, we have made available 7 NER datasets in
Huggingface, one for each entity type (disease, medication, body part,
finding, abbreviation, family member, and procedure). Here is a simple
notebook of how to load these datasets: https://lnkd.in/dVddWXux.
Contact: wassa2023(a)googlegroups.com
Website: https://wassa-workshop.github.io/
BACKGROUND AND ENVISAGED SCOPE
Subjectivity and Sentiment Analysis has become a highly developed research area, ranging from binary classification of reviews to the detection of complex emotion structures between entities found in text. This field has expanded both on a practical level, finding numerous successful applications in business, as well as on a theoretical level, allowing researchers to explore more complex research questions related to affective computing. Its continuing importance is also shown by the interest it generates in other disciplines such as Economics, Sociology, Psychology, Marketing, Crisis Management & Digital Humanities.
The aim of WASSA 2023 is to bring together researchers working on Subjectivity, Sentiment Analysis, Emotion Detection and Classification and their applications to other NLP or real-world tasks (e.g. public health messaging, fake news, media impact analysis, social media mining, computational literary studies) and researchers working on interdisciplinary aspects of affect computation from text. For this edition, we encourage the submission of long and short research and demo papers
including, but not restricted to the following topics:
• Resources for subjectivity, sentiment, emotion and social media analysis
• Opinion retrieval, extraction, categorization, aggregation and summarization
• Humor, Irony and Sarcasm detection
• Mis- and disinformation analysis and the role of affective attributes
• Aspect and topic-based sentiment and emotion analysis
• Analysis of stable traits of social media users, incl. personality analysis and profiling
• Transfer learning for domain, language and genre portability of sentiment analysis
• Modelling commonsense knowledge for subjectivity, sentiment or emotion analysis
• Improvement of NLP tasks using subjectivity and/or sentiment analysis
• Intrinsic and extrinsic evaluation of subjectivity and/or sentiment analysis
• The role of emotions in argument mining
• Application of theories from related fields to subjectivity and sentiment analysis
• Multimodal emotion detection and classification
• Applications of sentiment and emotion mining
• Public sentiments and communication patterns of public health emergencies.
We furthermore encourage submissions to the special theme Ethics in Affective Computing, including opinion papers, as well as experimental papers. This includes the following topics, but is not limited to them:
• Which properties of a model render a automatic analysis task unethical?
• Which characteristics of an annotation task are to be considered in ethical considerations?
• What are appropriate methods to analyze data and models from an ethical perspective?
• What aspects are particular important for affective analysis tasks, in contrast to other NLP
settings?
IMPORTANT DATES
April 24, 2023 – Submission deadline for main workshop papers.
May 1, 2023 – Commitment deadline for submitting through ARR with reviews
May 22, 2023 – Notification of acceptance.
June 6, 2023 – Camera-ready papers due.
June 12, 2023 – Pre-recorded video due.
July 13 or 14, 2023 – Workshop.
Note that the shared tasks follow a different timeline that will be communicated separately.
SUBMISSION
At WASSA 2023, we will accept four types of submissions: long, short, ARR commitments, and industry track demo papers. For the regular research track we accept long & short papers. Submission is electronic, through the OpenReview portal for the workshop with the deadline on April 24, 2023. Both long and short papers must be anonymised for double-blind reviewing, must follow the ACL Author Guidelines, and must use the ACL 2023 templates available on the ACL Rolling Review website. The submitting author must have an OpenReview profile. Please ensure profiles are complete before
submission.
Long: Long papers may consist of up to eight (8) pages of content, with any number of additional pages of references, and will be presented orally.
Short: Short papers may consist of up to four (4) pages of content, with two (2) additional pages of references, and will be presented either orally or as a poster.
ARR Commitments: Additionally, we accept double submissions and double commitment of ARR reviews in parallel to WASSA and another venue. Please note that you must immediately withdraw your paper from WASSA if you decide to publish it elsewhere. They must be committed to the workshop (together with the reviews) not later than May 1, 2023.
Industry Demos: We also include an industry track, for which we accept demo papers that describe system demonstrations, ranging from early prototypes to mature production-ready systems. Please note: Commercial sales and marketing activities are not appropriate for this track. Demo papers may consist of up to six (6) pages of content, these will be presented as a poster and should include a live demonstration.
Additionally, system description papers from the shared tasks will be presented either orally
or as poster.
SHARED TASK
Following the success of the shared tasks organized in 2017, 2018, 2021 and 2022, we will continue our line of shared tasks. We will propose a first shared task on Empathy Detection and Emotion Classification in conversation at the speech-turn level, and a second shared task on multi-class and multi-label emotion classification on code-mixed (Roman Urdu + English) text messages. The tasks and deadlines will be communicated in due time. Keep a close eye on the
workshop website for more details: https://wassa-workshop.github.io/
ORGANIZERS
Jeremy Barnes, IXA group, University of the Basque Country UPV/EHU
Orph ́ee De Clercq, LT3 Language and Translation Technology Team, Ghent University
Roman Klinger, Institut f ̈ur Maschinelle Sprachverarbeitung, University of Stuttgart, Germany
Valentin Barriere, Centro Nacional de Inteligencia Artificial
Shabnam Tafreshi, University of Maryland: ARLIS
Jo ̃ao Sedoc, Technology, Operations, and Statistics department, New York University
Iqra Ameer, Yale University
Call for participation - shared task on Multilingual Grammatical Error Detection (MultiGED-2023) on Czech, English, German, Italian and Swedish
Official website for the shared task: https://github.com/spraakbanken/multiged-2023
The Computational SLA<https://spraakbanken.gu.se/en/compsla> working group invites you to participate in the first shared task on Multilingual Grammatical Error Detection, MultiGED-2023, which includes five languages: Czech, English, German, Italian and Swedish.
The aim of this shared task is to detect tokens in need of correction across five different languages, labeling them as either correct ("c") or incorrect ("i"), i.e. performing binary classification at the token level. You can work on one of the provided languages or any combination of languages.
More details about the task: https://github.com/spraakbanken/multiged-2023
The shared task is part of the NLP4CALL workshop<https://spraakbanken.gu.se/en/research/themes/icall/nlp4call-workshop-serie…>, which will take place on 22 May 2023, co-located with the NoDaLiDa conference<https://www.nodalida2023.fo/> to be held in the Faroe Islands. Accepted papers with systems descriptions will be published in the workshop proceedings and double-published through the ACL anthology.
Timeline:
* 23 January, 2023 - first call for participation. Training and validation data released, CodaLab opens for team registrations.
* 14 February, 2023 - second call/reminder
* 27 February, 2023 - test data released
* 03 March, 2023 - system submission deadline (system output)
* 10 March, 2023 - results announced
* 03 April, 2023 - paper submission deadline with system descriptions. We encourage you to share models, code, fact sheets, extra data, etc. with the community through github or other repositories on paper publication.
* 21 April, 2023 - paper reviews sent to the authors
* 01 May, 2023 - camera-ready deadline
* 22 May, 2023 - presentations of the systems at NLP4CALL workshop
To register for/express interest in the shared task, please fill in this form<https://forms.gle/DgwTNmTCQhsmrbxq6>.
To ask questions and to get important information and updates about the shared task, please join the MultiGED-2023 Google Group<https://groups.google.com/g/multiged-2023>.
Official system evaluation will be carried out on CodaLab<https://codalab.lisn.upsaclay.fr/competitions/9784>.
Organizers:
* Elena Volodina<https://spraakbanken.gu.se/en/about/staff/elena>, University of Gothenburg, Sweden
* Chris Bryant<https://www.cst.cam.ac.uk/people/cjb255>, University of Cambridge, UK
* Andrew Caines<https://www.cl.cam.ac.uk/~apc38/>, University of Cambridge, UK
* Orphee De Clercq<https://research.flw.ugent.be/nl/orphee.declercq>, Ghent University, Belgium
* Jennifer-Carmen Frey<https://www.eurac.edu/en/people/jennifer-carmen-frey>, EURAC Research, Italy
* Elizaveta Ershova, JetBrains, Cyprus
* Alexandr Rosen<http://utkl.ff.cuni.cz/~rosen/>, Charles University, Czech Republic
* Olga Vinogradova, Independent researcher, Israel
Please, feel freee to forward this call to those who might be interested.
___________________
Elena Volodina, PhD, Docent
https://spraakbanken.gu.se/en/about/staff/elena
Life is like a mirror. Smile at it and it smiles back at you.
Peace Pilgrim
Dear All,
In the context of a large national investment in the Humanities, there are
24 assistant professor positions currently available at the Faculty of Arts
of the University of Groningen, The Netherlands. This Faculty also hosts
the Natural Language Processing group (@GroNLP,
https://www.rug.nl/research/clcg/research/cl/?lang=en).
Several of these positions are aimed at strengthening the field of Humane
AI, with a particular focus on NLP. More details can be found here:
https://www.rug.nl/let/sectorplan/positions-in-humane-ai.
The application procedure is centralised for all 24 positions:
https://www.rug.nl/let/sectorplan/
If you have any questions regarding the NLP / Humane AI positions, you can
get in touch with me.
The application deadline is January 31st 2023.
If you work in relevant fields and are willing to join an active and
vibrant research group, please consider applying!
Best wishes,
Malvina Nissim
-------------------------------
prof. dr. Malvina Nissim
Chair of Computational Linguistics and Society
Center for Language and Cognition Groningen
Faculty of Arts, Rijksuniversiteit Groningen, The Netherlands
(on scholar: https://scholar.google.nl/citations?user=hnTpEOAAAAAJ)
Hello All,
The annual European Conference on Information Retrieval (ECIR) is the main
European forum for the presentation of new research results in the field of
Information Retrieval. In 2023, the forty fifth ECIR conference (ECIR'23)
will be held in Dublin, Ireland from the 2nd to the 6th of April 2023.
ECIR'23 will feature a high quality programme including long and short
papers, posters, demonstrations, workshops & tutorials and an Industry Day.
A tentative schedule for the event can be found here
*http://ecir2023.org/programs/draft-schedule.html
<http://ecir2023.org/programs/draft-schedule.html>*
The conference offers different registration categories:
- Early Registration (until 31st January 2023)
- Normal Registration (until 30th March 2023)
- Late/Onsite Registration (after 30th March 2023)
- Virtual Registration (non-authors)
- Ancillary/Single Event Registration
More details about registration rates can be found in this link
*http://ecir2023.org/registration.html
<http://ecir2023.org/registration.html>*
All registrations must be done via ECIR 2023 registration site:
*https://ecir2023.eventbrite.ie/
<https://ecir2023.eventbrite.ie/>*
Best Regards,
Esraa Ali, Ph.D.
DCU
Publicity officer, ECIR 2023
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*ESSAI - European Summer School in Artificial Intelligence*24-28 July 2023
Ljubljana, Slovenia
*CALL FOR COURSE PROPOSALS*
1st European Summer School in Artificial Intelligence - ESSAI 2023
24-28 July, 2023
Faculty of Computer and Information Science, University of Ljubljana,
Slovenia
https://eurai.org/essai
ESSAI 2023 is organized jointly with ACAI 2023, the Twentieth Advanced
Course on Artificial Intelligence, and with the third TAILOR Summer School
on Artificial Intelligence.
*IMPORTANT DATES:*
24 Jan 2023: Course Title submission deadline (mandatory)
31 Jan 2023: Final submission
28 Feb 2023: Notification
The European Summer School in Artificial Intelligence (ESSAI) is a new
annual summer school held under the auspices of the European Association
for Artificial Intelligence (EurAI). ESSAI build on initiatives of the EU
project TAILOR, and the 1st edition of ESSAI is simultaneously the 3rd
edition of the TAILOR Summer School. The ambition of ESSAI is to become the
central meeting place for students and young researchers in Artificial
Intelligence to discuss current research and share knowledge.
ESSAI will provide an interdisciplinary setting in which courses are
offered in all areas of Artificial Intelligence and also from wider
scientific, historical, and philosophical perspectives. The format of ESSAI
is analogous to the European Summer School in Logic, Language and
Information (ESSLLI) which has been running since 1989. Courses will
consist of five 90-minute sessions, offered daily (Monday-Friday) in a
single week, to allow students to develop in-depth knowledge of a topic.
The first ESSAI will be held in Ljubljana, Slovenia in between the 24th and
28th of July 2023. ESSAI 2023 aims to attract around 400 participants from
all parts of Europe, as well as from North and Latin America, and Asia.
*TOPICS AND FORMAT*
ESSAI aims to cover all subdisciplines of AI and the interactions between
them.
Proposals for courses at ESSAI 2023 are invited in all areas of Artificial
Intelligence, including but not limited to the following:
- Agent-based and Multi-agent Systems (MAS)
- Ethics, Legal Issues, Explainable and Trustworthy AI (XAI)
- Knowledge Representation and Reasoning (KR)
- Natural Language Processing (NLP)
- Neuro-Symbolic Learning and Reasoning (NeSy)
- Planning & Strategic Reasoning (PLAN)
- Reinforcement Learning (RL)
- Robotics (ROB)
- Search & Optimization (SO)
- Supervised and Unsupervised Learning (ML)
- Vision (VIS)
Each course will consist of five 90-minute lectures, offered daily
(Monday-Friday) in a single week.
While foundational courses will typically focus on one subarea of AI,
introductory and advanced courses are encouraged to present a broader
perspective on AI, and should be of interest beyond one specific area.
*CATEGORIES*
Each proposal should fall under one of the following categories.
* FOUNDATIONAL COURSES *
Foundational courses present the basics of a research area to students with
no prior knowledge in that area. They should be at an elementary level,
without prerequisites in the course's topic, though possibly assuming a
level of general scientific maturity in the relevant discipline. They
should enable researchers from related disciplines to become comfortable
with the fundamental concepts and techniques of the course topic, thereby
contributing to the interdisciplinary nature of our research community.
* INTRODUCTORY COURSES *
Introductory courses are central to ESSAI's mission. They are intended to
introduce a research field to students, young researchers, and other
non-specialists, and to foster a sound understanding of its basic methods
and techniques. Introductory courses should enable researchers from related
disciplines to become competent in the course topic. Introductory courses
that are cross-disciplinary may presuppose general knowledge of the
relevant disciplines.
* ADVANCED COURSES *
Advanced courses are targeted primarily at graduate students who wish to
acquire an understanding of current research in a field of Artificial
Intelligence.
*PROPOSAL GUIDELINES*
To be considered, course proposals should closely adhere to the following
guidelines:
Course proposals must be submitted by the lecturers who will present the
course. Normally, a course should have no more than two or three lecturers,
and each lecturer should hold a PhD or equivalent degree.
Course proposals should explicitly state the intended course category.
Proposals for introductory courses should indicate the intended level, for
example, as it relates to standard textbooks and monographs in the area.
Proposals for advanced courses should specify the prerequisites in detail.
Proposals must be submitted in PDF format via:
https://easychair.org/conferences/?conf=essai2023
and include all of the following:
a. Personal information for each proposer: Name, affiliation, contact
address, email, homepage (optional)
b. General proposal information: Title, category
c. Information about the course content:
Abstract of up to 150 words
Motivation and description (up to two pages)
Tentative outline
Expected level and prerequisites
Appropriate references (e.g. textbooks, monographs, proceedings,
surveys)
d. Information about the proposer(s) and course:
Proposers’ experience of delivering courses in an intensive
interdisciplinary setting
Evidence that the proposers are excellent lecturers
Where there is more than one lecturer, the role of each lecturer and their
teaching commitment to the course should be specified.
To keep participation fees to a minimum, all the instructional and
organizational work of ESSAI is performed on a completely voluntary basis.
However, the registration fees of organizers and instructors will be
waived, and travel and accommodation expenses will be reimbursed up to a
level which will be communicated along with the proposal notification.
ESSAI can only guarantee reimbursement for at most one course lecturer, and
can not guarantee full reimbursement of travel costs for lecturers from
outside of Europe. The organizers of ESSAI would appreciate any help in
reducing the School's expenses by seeking partial or complete coverage of
travel and accommodation expenses from other sources.
*SUBMISSION INFORMATION*
By Jan 24, 2023:
Proposers must submit on EasyChair at least the name(s) of the
lecturers(s), the ESSAI area+course level and a short abstract.
By Jan 31, 2023:
Submission must be completed by uploading a PDF with the actual proposal as
detailed above.
*SUBMISSION PORTAL*
Please submit your proposals to
https://easychair.org/conferences/?conf=essai2023
*PROGRAM COMMITTEE*
Magdalena Ortiz, Umeå University (chair)
Brian Logan, Utrecht University (associate co-chair)
Sašo Džeroski, Jozef Stefan Institute Ljubljana (co-chair and ACAI chair)
*AREA CHAIRS*
Natasha Alechina, Utrecht University
Kristian Kersting, TU Darmstadt
Günter Klambauer, Johannes Kepler Universität Linz
Ioannis Kompatsiaris, CERTH-ITI
Roberto Navigli, Sapienza University of Rome
Ann Nowé, Vrije Universiteit Brussel
Alessandro Saffiotti, University of Örebro
Sungho Suh, DFKI
*ORGANIZING COMMITTEE*
Aleksander Sadikov, University of Ljubljana
Vida Groznik, University of Primorska, University of Ljubljana,
Sašo Džeroski, Jožef Stefan Institute
Jure Žabkar, University of Ljubljana
*STANDING COMMITTEE*
Giuseppe De Giacomo, Sapienza University of Rome, Head of SC and EurAI
Board Representative
--
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Roberto Navigli - Professor
Department of Computer, Control and Management Engineering
Sapienza University of Rome
Via Ariosto, 25
00185 Roma Italy
Phone: +39 06 77274109
Home Page: https://www.diag.uniroma1.it/navigli/
Sapienza NLP Group: http://nlp.uniroma1.it
Co-founder of Babelscape
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