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  • 1
    Publication Date: 2011-04-01
    Description: When students study for multiple-choice cloze tests as the Test of English for International Communication (TOEIC), they tend to repeatedly tackle questions of the same type. In such situations, students can effectively solve questions related to their incorrectly answered questions. However, since they need several different kinds of knowledge and a large vocabulary to derive answers, it is inappropriate to statically define the relations among questions from various viewpoints beforehand. In this paper, we propose a recommendation algorithm for English multiple-choice cloze questions that maximize students' expected improvements of test scores based on the learning log data of other students. Effective questions may be identical for most students who incorrectly answered the same questions. Therefore, in our approach, relations among questions in tests and questions studied during tests are determined based on the change from incorrect to the correct answers of the test questions. Questions that maximize the expected test scores, which are calculated based on the input test scores using regression models, are recommended for future students. Based on this method, students can acquire higher test scores with better learning efficiency. Experimental results show that our method yields major improvements in performance compared with random material recommendation method. Content Type Journal Article Pages 15-24 DOI 10.3233/KES-2010-0209 Authors Tomoharu Iwata, NTT Communication Science Laboratories, Japan Tomoko Kojiri, Graduate School of Information Science, Nagoya University, Japan Takeshi Yamada, NTT Communication Science Laboratories, Japan Toyohide Watanabe, Graduate School of Information Science, Nagoya University, Japan Journal International Journal of Knowledge-Based and Intelligent Engineering Systems Online ISSN 1875-8827 Print ISSN 1327-2314 Journal Volume Volume 15 Journal Issue Volume 15, Number 1 / 2011
    Print ISSN: 1327-2314
    Electronic ISSN: 1875-8827
    Topics: Computer Science
    Published by IOS Press
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