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

Authors :
Owens MT
Seidel SB
Wong M
Bejines TE
Lietz S
Perez JR
Sit S
Subedar ZS
Acker GN
Akana SF
Balukjian B
Benton HP
Blair JR
Boaz SM
Boyer KE
Bram JB
Burrus LW
Byrd DT
Caporale N
Carpenter EJ
Chan YM
Chen L
Chovnick A
Chu DS
Clarkson BK
Cooper SE
Creech C
Crow KD
de la Torre JR
Denetclaw WF
Duncan KE
Edwards AS
Erickson KL
Fuse M
Gorga JJ
Govindan B
Green LJ
Hankamp PZ
Harris HE
He ZH
Ingalls S
Ingmire PD
Jacobs JR
Kamakea M
Kimpo RR
Knight JD
Krause SK
Krueger LE
Light TL
Lund L
Márquez-Magaña LM
McCarthy BK
McPheron LJ
Miller-Sims VC
Moffatt CA
Muick PC
Nagami PH
Nusse GL
Okimura KM
Pasion SG
Patterson R
Pennings PS
Riggs B
Romeo J
Roy SW
Russo-Tait T
Schultheis LM
Sengupta L
Small R
Spicer GS
Stillman JH
Swei A
Wade JM
Waters SB
Weinstein SL
Willsie JK
Wright DW
Harrison CD
Kelley LA
Trujillo G
Domingo CR
Schinske JN
Tanner KD
Source :
Proceedings of the National Academy of Sciences of the United States of America [Proc Natl Acad Sci U S A] 2017 Mar 21; Vol. 114 (12), pp. 3085-3090. Date of Electronic Publication: 2017 Mar 06.
Publication Year :
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
ISSN :
1091-6490
Volume :
114
Issue :
12
Database :
MEDLINE
Journal :
Proceedings of the National Academy of Sciences of the United States of America
Publication Type :
Academic Journal
Accession number :
28265087
Full Text :
https://doi.org/10.1073/pnas.1618693114