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SDP 2021 : 2nd Workshop on Scholarly Document Processing (SDP 2021) @ NAACL 2021 | |||||||||||||||||
Link: https://sdproc.org/ | |||||||||||||||||
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Call For Papers | |||||||||||||||||
Dear colleagues,
You are invited to participate in the 2nd Workshop on Scholarly Document Processing (SDP 2021) to be held on June 10 at NAACL 2021 (June 6 - 11, https://2021.naacl.org/). The SDP 2021 workshop will consist of a Research track and 3 Shared Tasks. The call for research papers is described below, and more details can be found on our website, http://www.sdproc.org/. ***The Title & Abstract submission deadline is March 15, 2021.*** ***The Paper submission deadline is extended to March 19, 2021. (Changes to previously-submitted title & abstract are allowed).*** ***These deadlines apply to the main Research Track and the LongSumm & SciVER shared tasks.*** ***The 3C shared task ends on April 30, 2021, and has a submission deadline of May 10, 2021.*** Papers must follow the NAACL Format (https://2021.naacl.org/calls/style-and-formatting/) and conform to the NAACL Submission Guidelines (https://2021.naacl.org/calls/papers/first/). Paper submission has to be done through the Softconf system: https://www.softconf.com/naacl2021/sdp2021/ Website: http://www.sdproc.org/ Twitter: https://twitter.com/sdproc Mailing list: https://groups.google.com/g/sdproc-updates Main Research Track: https://sdproc.org/2021/cfp.html LongSumm 2021 shared task: https://sdproc.org/2021/sharedtasks.html#longsumm SCIVER shared task: https://sdproc.org/2021/sharedtasks.html#sciver 3C shared task: https://sdproc.org/2021/sharedtasks.html#3c == Call for papers == ** Introduction ** Although scientific literature plays a major part in research and policy-making, these texts represent an underserved area of NLP. NLP can play a role in addressing research information overload, identifying disinformation and its effect on people and society, and enhancing the reproducibility of science. The unique challenges of processing scholarly documents necessitate the development of specific methods and resources optimized for this domain. The Scholarly Document Processing (SDP) workshop provides a venue for discussing these challenges, bringing together stakeholders from different communities including computational linguistics, text mining, information retrieval, digital libraries, scientometrics, and others to develop and present methods and resources in support of these goals. This workshop builds on the success of prior workshops: the 1st SDP workshop held at EMNLP 2020 and the 1st SciNLP workshop held at AKBC 2020. In addition to having broad appeal within the NLP community, we hope the SDP workshop will attract researchers from other relevant fields including meta-science, scientometrics, data mining, information retrieval, and digital libraries, bringing together these disparate communities within ACL. ** Topics of Interest ** We invite submissions from all communities demonstrating usage of and challenges associated with natural language processing, information retrieval, and data mining of scholarly and scientific documents. Relevant tasks include: * Representation learning * Information extraction * Summarization * Generation * Question answering * Discourse modeling and argumentation mining * Network analysis * Bibliometrics, scientometrics, and altmetrics * Reproducibility * Peer review * Search and indexing * Datasets and resources * Document parsing * Text mining * Research infrastructure, and others. We specifically invite research on important and/or underserved areas, such as: * Identifying/mitigating scientific disinformation and its effects on public policy and behavior * Reducing information overload through summarization and aggregation of information within and across documents * Improving access to scientific papers through multilingual scholarly document processing ** Submission Information ** Authors are invited to submit full and short papers with unpublished, original work. Submissions will be subject to a double-blind peer review process. Accepted papers will be presented by the authors at the workshop either as a talk or a poster. All accepted papers will be published in the workshop proceedings. The submissions should be in PDF format and anonymized for review. All submissions must be written in English and follow the NAACL 2021 formatting requirements: https://2021.naacl.org/calls/style-and-formatting/ We follow the same policies as NAACL 2021 regarding preprints and double-submissions (https://2021.naacl.org/calls/papers/). The anonymity period for SDP 2021 is from February 15, 2021 to April 15, 2021. Long paper submissions: up to 8 pages of content, plus unlimited references. Short paper submissions: up to 4 pages of content, plus unlimited references. Final versions of accepted papers will be allowed 1 additional page of content so that reviewer comments can be taken into account. More details about submissions are available on our website: http://www.sdproc.org. To receive updates, please join our mailing list: https://groups.google.com/g/sdproc-updates or follow us on Twitter: https://twitter.com/sdproc ** Important Dates ** * 1st Call for Workshop Papers – December 6, 2020 * 2nd Call for Workshop Papers – March 1, 2021 * Title & abstract submissions due – March 15, 2021 * All paper submissions due – March 19, 2021 * Notification of acceptance – April 15, 2021 * Camera-ready papers due – April 26, 2021 * Workshop – June 10, 2021 **3C shared task - New Dates** * Competition end date – April 30, 2021 * Paper and code submission deadline – May 10, 2021 * Shared task acceptance notification – May 25, 2021 * Camera-ready papers due – June 03, 2021 * Workshop – June 10, 2021 ** SDP 2021 Keynote Speakers ** We're excited to have 3 keynote speakers at SDP 2021: * Hannaneh Hajishirzi, University of Washington and AI2 * Yoav Goldberg, Bar Ilan University and AI2 Israel * Isabelle Augenstein, University of Copenhagen ** Organizing Committee ** Iz Beltagy, Allen Institute for AI, Seattle, USA Arman Cohan, Allen Institute for AI, Seattle, USA Guy Feigenblat, IBM Research AI, Haifa Research Lab, Israel Dayne Freitag, SRI International, San Diego, USA Tirthankar Ghosal, Indian Institute of Technology Patna, India Keith Hall, Google Research, New York, USA Drahomira Herrmannova, Oak Ridge National Laboratory, USA Petr Knoth, Open University, UK Kyle Lo, Allen Institute for AI, Seattle, USA Philipp Mayr, GESIS -- Leibniz Institute for the Social Sciences, Germany Robert M. Patton, Oak Ridge National Laboratory, USA Michal Shmueli-Scheuer, IBM Research AI, Haifa Research Lab, Israel Anita de Waard, Elsevier, USA Kuansan Wang, Microsoft Research, Redmond, USA Lucy Lu Wang, Allen Institute for AI, Seattle, USA |
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