Back to Search Start Over

Classroom sound can be used to classify teaching practices in college science courses

Authors :
Steven B. Waters
Rachel Small
Amy S. Edwards
Wilfred F. Denetclaw
Segal M. Boaz
Yee-Hung M Chan
Sara K. Krause
Jeffrey N. Schinske
Gloriana Trujillo
Loretta A Kelley
Diana W. Wright
Susan F. Akana
Lance Lund
Mike Wong
Greg S. Spicer
Kristine M. Okimura
Pleuni S. Pennings
Natalia Caporale
Paul Z. Hankamp
Zahur-Saleh Subedar
L. Jeanette Green
Dana T. Byrd
Linda J. McPheron
Kathleen E. Duncan
Holly E Harris
Karen D. Crow
Joseph R. Perez
J R Blair
Stephen B Ingalls
Shannon B. Seidel
Katharyn E. Boyer
Bryan K. Clarkson
Amy Chovnick
Joseph J. Gorga
Peter Ingmire
Diana S Chu
Lori E. Krueger
Terrye L Light
Paul H. Nagami
Brinda Govindan
Lisa M. Schultheis
Andrea Swei
Lily Chen
Robert Patterson
Jonathan D. Knight
Scott William Roy
Joseph M Romeo
Shangheng Sit
Jonathon H. Stillman
Leticia Márquez-Magaña
Sara E. Cooper
Colin D Harrison
Hilary P Benton
Gloria Nusse
Mark Kamakea
J. Rebecca Jacobs
Sally G. Pasion
Carmen R. Domingo
Laura W. Burrus
Rhea R. Kimpo
Zheng-Hui He
Kimberly D. Tanner
Vanessa C Miller-Sims
José R. de la Torre
Susanne Lietz
Jennifer M. Wade
Travis E. Bejines
Tatiane Russo-Tait
Gigi N. Acker
Julia K. Willsie
Steven L. Weinstein
Christopher A. Moffatt
Melinda T. Owens
Lakshmikanta Sengupta
Brad Balukjian
Karen L. Erickson
Jason B. Bram
Edward J. Carpenter
Megumi Fuse
Briana K. McCarthy
Pamela C. Muick
Blake Riggs
Catherine Creech
Publication Year :
2017
Publisher :
National Academy of Sciences, 2017.

Abstract

Active-learning pedagogies have been repeatedly demonstrated to produce superior learning gains with large effect sizes compared with lecture-based pedagogies. Shifting large numbers of college science, technology, engineering, and mathematics (STEM) faculty to include any active learning in their teaching may retain and more effectively educate far more students than having a few faculty completely transform their teaching, but the extent to which STEM faculty are changing their teaching methods is unclear. Here, we describe the development and application of the machine-learning-derived algorithm Decibel Analysis for Research in Teaching (DART), which can analyze thousands of hours of STEM course audio recordings quickly, with minimal costs, and without need for human observers. DART analyzes the volume and variance of classroom recordings to predict the quantity of time spent on single voice (e.g., lecture), multiple voice (e.g., pair discussion), and no voice (e.g., clicker question thinking) activities. Applying DART to 1,486 recordings of class sessions from 67 courses, a total of 1,720 h of audio, revealed varied patterns of lecture (single voice) and nonlecture activity (multiple and no voice) use. We also found that there was significantly more use of multiple and no voice strategies in courses for STEM majors compared with courses for non-STEM majors, indicating that DART can be used to compare teaching strategies in different types of courses. Therefore, DART has the potential to systematically inventory the presence of active learning with ∼90% accuracy across thousands of courses in diverse settings with minimal effort.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....2706094a54ecd23a959d42dab1423068