ERIC Number: ED596591
Record Type: Non-Journal
Publication Date: 2017-Jun
Pages: 6
Abstractor: As Provided
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Data-Mining Textual Responses to Uncover Misconception Patterns
Michalenko, Joshua J.; Lan, Andrew S.; Waters, Andrew E.; Grimaldi, Philip J.; Baraniuk, Richard G.
International Educational Data Mining Society, Paper presented at the International Conference on Educational Data Mining (EDM) (10th, Wuhan, China, Jun 25-28, 2017)
An important, yet largely unstudied problem in student data analysis is to detect "misconceptions" from students' responses to "open-response" questions. Misconception detection enables instructors to deliver more targeted feedback on the misconceptions exhibited by many students in their class, thus improving the quality of instruction. In this paper, we propose a new natural language processing-based framework to detect the common misconceptions among students' textual responses to short-answer questions. We propose a probabilistic model for students' textual responses involving misconceptions and experimentally validate it on a real-world student-response dataset. Experimental results show that our proposed framework excels at classifying whether a response exhibits one or more misconceptions. More importantly, it can also automatically detect the common misconceptions exhibited across responses from multiple students to multiple questions; this property is especially important at large scale, since instructors will no longer need to manually specify all possible misconceptions that students might exhibit. [For the full proceedings, see ED596512.]
Descriptors: Data Analysis, Misconceptions, Student Attitudes, Feedback (Response), Teaching Methods, Educational Quality, Educational Improvement, Guidelines, Classification, Questionnaires, Natural Language Processing, Markov Processes, Monte Carlo Methods, Biology, Science Instruction, Intelligent Tutoring Systems, Advanced Placement, High School Students
International Educational Data Mining Society. e-mail: admin@educationaldatamining.org; Web site: http://www.educationaldatamining.org
Publication Type: Reports - Research; Speeches/Meeting Papers
Education Level: High Schools; Secondary Education
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Language: English
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