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MSciP 2020 : Mining Scientific Papers Volume II: Knowledge Discovery and Data Exploitation

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Link: https://www.frontiersin.org/research-topics/13388/mining-scientific-papers-volume-ii-knowledge-discovery-and-data-exploitation
 
When N/A
Where N/A
Abstract Registration Due Jun 15, 2020
Submission Deadline Sep 1, 2020
Categories    NLP   knowledge discovery   text mining
 

Call For Papers

We are happy to announce that the Research Topic “Mining Scientific Papers" in the Open Access journal Frontiers in Research Metrics and Analytics has a follow-up issue on Knowledge Discovery and Data Exploitation (https://www.frontiersin.org/research-topics/13388/mining-scientific-papers-volume-ii-knowledge-discovery-and-data-exploitation) edited by Iana Atanassova, Marc Bertin and Philipp Mayr.

This research topic aims at promoting interdisciplinary research in computational linguistics and natural language processing (NLP) in the field of bibliometric/scientometrics and information retrieval.

We encourage contributions on theoretical findings, practical methods, technologies on the processing of scientific corpora involving full text processing, semantic analysis, text mining, citation classification and related topics. We also encourage surveys and evaluations of state-of-the-art methods, as well as more exploratory papers to identify novel challenges and pave the way to future theoretical frameworks.

We also invite papers (e.g. Brief Research Reports, Data Reports, Methods, Opinions, Original Research, ...) produced by participants of the recently launched COVID-19 Open Research Dataset Challenge (CORD-19) (https://www.kaggle.com/allen-institute-for-ai/CORD-19-research-challenge).

You can find more information here: https://www.frontiersin.org/research-topics/13388/mining-scientific-papers-volume-ii-knowledge-discovery-and-data-exploitation

If you decide to submit a manuscript within our collection, your contribution will be peer-reviewed and judged on originality, interest, clarity, relevance, correctness, language, and presentation (inter alia) by our editorial board members.

Immediately upon publication, your paper will be free to read for everyone, increasing visibility, and citations. Publication will be free of charge for a selected set of papers in the Research Topic depending on their quality and relevance to the topic.
Information on the publishing fees and financial support for authors can be found here: https://www.frontiersin.org/about/publishing-fees.

Authors should submit Abstracts ahead of the full manuscript submission.

Submission Deadlines:

15 June 2020 – Abstract submission
1 September 2020 – Manuscript submission

Editors of the Research Topic:

Iana Atanassova: iana.atanassova@univ-fcomte.fr
Marc Bertin: marc.bertin@univ-lyon1.fr
Philipp Mayr: philipp.mayr@gesis.org


If you have any questions, please do not hesitate to write to the journal team at researchmetrics@frontiersin.org.

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