Collaborative and AI-aided Exam Question Generation using Wikidata in Education
Collaborative and AI-aided Exam Question Generation using Wikidata in Education
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2022
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Wikidata’22 : Wikidata workshop at ISWC 2022 / Kaffee, Lucie-Aimée; Razniewski, Simon; Amaral, Gabriel et al. (ed.). - Aachen : RWTH Aachen, 2022. - (CEUR Workshop Proceedings ; 3262). - eISSN 1613-0073
Abstract
Since the COVID-19 outbreak, the use of digital learning or education platforms has substantially increased. Teachers now digitally distribute homework and provide exercise questions. In both cases, teachers need to develop novel and individual questions continuously. This process can be very time-consuming and should be facilitated and accelerated both through exchange with other teachers and by using Artificial Intelligence (AI) capabilities. To address this need, we propose a multilingual Wikimedia framework that allows for collaborative worldwide teacher knowledge engineering and subsequent AI-aided question generation, test, and correction. As a proof of concept, we present »PhysWikiQuiz«, a physics question generation and test engine. Our system (hosted by Wikimedia at https://physwikiquiz.wmflabs.org) retrieves physics knowledge from the open community-curated database Wikidata. It can generate questions in different variations and verify answer values and units using a Computer Algebra System (CAS). We evaluate the performance on a public benchmark dataset at each stage of the system workflow. For an average formula with three variables, the system can generate and correct up to 300 questions for individual students, based on a single formula concept name as input by the teacher.
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004 Computer Science
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3rd Wikidata Workshop 2022 (virtual), Oct 24, 2022
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SCHARPF, Philipp, Moritz SCHUBOTZ, Andreas SPITZ, Andre GREINER-PETTER, Bela GIPP, 2022. Collaborative and AI-aided Exam Question Generation using Wikidata in Education. 3rd Wikidata Workshop 2022 (virtual), Oct 24, 2022. In: KAFFEE, Lucie-Aimée, ed., Simon RAZNIEWSKI, ed., Gabriel AMARAL, ed. and others. Wikidata’22 : Wikidata workshop at ISWC 2022. Aachen:RWTH Aachen. eISSN 1613-0073BibTex
@inproceedings{Scharpf2022Colla-59778, year={2022}, title={Collaborative and AI-aided Exam Question Generation using Wikidata in Education}, number={3262}, publisher={RWTH Aachen}, address={Aachen}, series={CEUR Workshop Proceedings}, booktitle={Wikidata’22 : Wikidata workshop at ISWC 2022}, editor={Kaffee, Lucie-Aimée and Razniewski, Simon and Amaral, Gabriel}, author={Scharpf, Philipp and Schubotz, Moritz and Spitz, Andreas and Greiner-Petter, Andre and Gipp, Bela} }
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