Authors
Sean Kelly, Andrew M Olney, Patrick Donnelly, Martin Nystrand, Sidney K D’Mello
Publication date
2018/10
Journal
Educational Researcher
Volume
47
Issue
7
Pages
451-464
Publisher
Sage Publications
Description
Analyzing the quality of classroom talk is central to educational research and improvement efforts. In particular, the presence of authentic teacher questions, where answers are not predetermined by the teacher, helps constitute and serves as a marker of productive classroom discourse. Further, authentic questions can be cultivated to improve teaching effectiveness and consequently student achievement. Unfortunately, current methods to measure question authenticity do not scale because they rely on human observations or coding of teacher discourse. To address this challenge, we set out to use automatic speech recognition, natural language processing, and machine learning to train computers to detect authentic questions in real-world classrooms automatically. Our methods were iteratively refined using classroom audio and human-coded observational data from two sources: (a) a large archival database of …
Total citations
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Scholar articles
S Kelly, AM Olney, P Donnelly, M Nystrand, SK D'Mello - Educational Researcher, 2018