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QuestionComb : A Gamification Approach for the Visual Explanation of Linguistic Phenomena through Interactive Labeling

QuestionComb : A Gamification Approach for the Visual Explanation of Linguistic Phenomena through Interactive Labeling

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SEVASTJANOVA, Rita, Wolfgang JENTNER, Fabian SPERRLE, Rebecca KEHLBECK, Jürgen BERNARD, Mennatallah EL-ASSADY, 2021. QuestionComb : A Gamification Approach for the Visual Explanation of Linguistic Phenomena through Interactive Labeling. In: ACM Transactions on Interactive Intelligent Systems. ACM. 11(3-4), 19. ISSN 2160-6455. Available under: doi: 10.1145/3429448

@article{Sevastjanova2021Quest-54903, title={QuestionComb : A Gamification Approach for the Visual Explanation of Linguistic Phenomena through Interactive Labeling}, year={2021}, doi={10.1145/3429448}, number={3-4}, volume={11}, issn={2160-6455}, journal={ACM Transactions on Interactive Intelligent Systems}, author={Sevastjanova, Rita and Jentner, Wolfgang and Sperrle, Fabian and Kehlbeck, Rebecca and Bernard, Jürgen and El-Assady, Mennatallah}, note={Article Number: 19} }

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