Machine learning-based app for self-evaluation of teacher-specific instructional style and tools

Course instructors need to assess the efficacy of their teaching methods, but experiments in education are seldom politically, administratively, or ethically feasible. Quasi-experimental tools, on the other hand, are often problematic, as they are typically too complicated to be of widespread use to...

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Main Authors: Duzhin, Fedor, Gustafsson, Anders
Other Authors: School of Physical and Mathematical Sciences
Format: Article
Language:English
Published: 2019
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Online Access:https://hdl.handle.net/10356/103517
http://hdl.handle.net/10220/47358
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1035172023-02-28T19:44:02Z Machine learning-based app for self-evaluation of teacher-specific instructional style and tools Duzhin, Fedor Gustafsson, Anders School of Physical and Mathematical Sciences DRNTU::Science::Physics Learning Analytics Predictive Modelling Course instructors need to assess the efficacy of their teaching methods, but experiments in education are seldom politically, administratively, or ethically feasible. Quasi-experimental tools, on the other hand, are often problematic, as they are typically too complicated to be of widespread use to educators and may suffer from selection bias occurring due to confounding variables such as students’ prior knowledge. We developed a machine learning algorithm that accounts for students’ prior knowledge. Our algorithm is based on symbolic regression that uses non-experimental data on previous scores collected by the university as input. It can predict 60–70 percent of variation in students’ exam scores. Applying our algorithm to evaluate the impact of teaching methods in an ordinary differential equations class, we found that clickers were a more effective teaching strategy as compared to traditional handwritten homework; however, online homework with immediate feedback was found to be even more effective than clickers. The novelty of our findings is in the method (machine learning-based analysis of non-experimental data) and in the fact that we compare the effectiveness of clickers and handwritten homework in teaching undergraduate mathematics. Evaluating the methods used in a calculus class, we found that active team work seemed to be more beneficial for students than individual work. Our algorithm has been integrated into an app that we are sharing with the educational community, so it can be used by practitioners without advanced methodological training. Published version 2019-01-04T01:56:56Z 2019-12-06T21:14:24Z 2019-01-04T01:56:56Z 2019-12-06T21:14:24Z 2018 Journal Article Duzhin, F., & Gustafsson, A. (2018). Machine Learning-Based App for Self-Evaluation of Teacher-Specific Instructional Style and Tools. Education Sciences, 8(1), 7-. doi:10.3390/educsci8010007 2227-7102 https://hdl.handle.net/10356/103517 http://hdl.handle.net/10220/47358 10.3390/educsci8010007 en Education Sciences © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/). 15 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Science::Physics
Learning Analytics
Predictive Modelling
spellingShingle DRNTU::Science::Physics
Learning Analytics
Predictive Modelling
Duzhin, Fedor
Gustafsson, Anders
Machine learning-based app for self-evaluation of teacher-specific instructional style and tools
description Course instructors need to assess the efficacy of their teaching methods, but experiments in education are seldom politically, administratively, or ethically feasible. Quasi-experimental tools, on the other hand, are often problematic, as they are typically too complicated to be of widespread use to educators and may suffer from selection bias occurring due to confounding variables such as students’ prior knowledge. We developed a machine learning algorithm that accounts for students’ prior knowledge. Our algorithm is based on symbolic regression that uses non-experimental data on previous scores collected by the university as input. It can predict 60–70 percent of variation in students’ exam scores. Applying our algorithm to evaluate the impact of teaching methods in an ordinary differential equations class, we found that clickers were a more effective teaching strategy as compared to traditional handwritten homework; however, online homework with immediate feedback was found to be even more effective than clickers. The novelty of our findings is in the method (machine learning-based analysis of non-experimental data) and in the fact that we compare the effectiveness of clickers and handwritten homework in teaching undergraduate mathematics. Evaluating the methods used in a calculus class, we found that active team work seemed to be more beneficial for students than individual work. Our algorithm has been integrated into an app that we are sharing with the educational community, so it can be used by practitioners without advanced methodological training.
author2 School of Physical and Mathematical Sciences
author_facet School of Physical and Mathematical Sciences
Duzhin, Fedor
Gustafsson, Anders
format Article
author Duzhin, Fedor
Gustafsson, Anders
author_sort Duzhin, Fedor
title Machine learning-based app for self-evaluation of teacher-specific instructional style and tools
title_short Machine learning-based app for self-evaluation of teacher-specific instructional style and tools
title_full Machine learning-based app for self-evaluation of teacher-specific instructional style and tools
title_fullStr Machine learning-based app for self-evaluation of teacher-specific instructional style and tools
title_full_unstemmed Machine learning-based app for self-evaluation of teacher-specific instructional style and tools
title_sort machine learning-based app for self-evaluation of teacher-specific instructional style and tools
publishDate 2019
url https://hdl.handle.net/10356/103517
http://hdl.handle.net/10220/47358
_version_ 1759854289017110528