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Opening and Reusing Transparent Peer Reviews with Automatic Article Annotation

: Sadeghi, Afshin; Capadisli, Sarven; Wilm, Johannes; Lange, Christoph; May, Philipp

Fulltext urn:nbn:de:0011-n-5581588 (1.1 MByte PDF)
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Created on: 12.9.2019

Publications 7 (2019), No.1, Art. 13, 12 pp.
ISSN: 2304-6775
Deutsche Forschungsgemeinschaft DFG
AU 340/9-1; OSCOSS
Deutsche Forschungsgemeinschaft DFG
SU 647/19-1; OSCOSS
Journal Article, Electronic Publication
Fraunhofer IAIS ()
automatic semantic annotation; open peer review; knowledge extraction; open science; electronic publishing on the web

An increasing number of scientific publications are created in open and transparent peer review models: a submission is published first, and then reviewers are invited, or a submission is reviewed in a closed environment but then these reviews are published with the final article, or combinations of these. Reasons for open peer review include giving better credit to reviewers, and enabling readers to better appraise the quality of a publication. In most cases, the full, unstructured text of an open review is published next to the full, unstructured text of the article reviewed. This approach prevents human readers from getting a quick impression of the quality of parts of an article, and it does not easily support secondary exploitation, e.g., for scientometrics on reviews. While document formats have been proposed for publishing structured articles including reviews, integrated tool support for entire open peer review workflows resulting in such documents is still scarce. We present AR-Annotator, the Automatic Article and Review Annotator which employs a semantic information model of an article and its reviews, using semantic markup and unique identifiers for all entities of interest. The fine-grained article structure is not only exposed to authors and reviewers but also preserved in the published version. We publish articles and their reviews in a Linked Data representation and thus maximise their reusability by third party applications. We demonstrate this reusability by running quality-related queries against the structured representation of articles and their reviews.