Systematic Review of Approaches to Improve Peer Assessment at Scale

January 27, 2020 ยท Declared Dead ยท ๐Ÿ› arXiv.org

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Repo contents: 1.pdf, 10.pdf, 11.pdf, 12.pdf, 13.pdf, 15.pdf, 16.pdf, 17.pdf, 18.pdf, 19.pdf, 2.pdf, 21.pdf, 22.pdf, 23.pdf, 24.pdf, 25.pdf, 26.pdf, 27.pdf, 28.pdf, 29.pdf, 3.pdf, 30.pdf, 4.pdf, 5.pdf, 6.pdf, 7.pdf, 8.pdf, 9.pdf, README.md

Authors Manikandan Ravikiran arXiv ID 2001.10617 Category cs.CY: Computers & Society Cross-listed cs.AI, cs.CL, cs.HC Citations 4 Venue arXiv.org Repository https://github.com/manikandan-ravikiran/cs6460-Survey-2 Last Checked 2 months ago
Abstract
Peer Assessment is a task of analysis and commenting on student's writing by peers, is core of all educational components both in campus and in MOOC's. However, with the sheer scale of MOOC's & its inherent personalised open ended learning, automatic grading and tools assisting grading at scale is highly important. Previously we presented survey on tasks of post classification, knowledge tracing and ended with brief review on Peer Assessment (PA), with some initial problems. In this review we shall continue review on PA from perspective of improving the review process itself. As such rest of this review focus on three facets of PA namely Auto grading and Peer Assessment Tools (we shall look only on how peer reviews/auto-grading is carried), strategies to handle Rogue Reviews, Peer Review Improvement using Natural Language Processing. The consolidated set of papers and resources so used are released in https://github.com/manikandan-ravikiran/cs6460-Survey-2.
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