Detecting student carefulness in an educational game for physics

Carefulness is a construct that has been researched in the fields of education and social science. It is deemed as an important facet in learning as the more careful a student is, the less likely he/she will commit trivial errors or careless mistakes. Careful students have been seen to possess disci...

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Main Author: BANAWAN, MICHELLE
Format: text
Published: Archīum Ateneo 2018
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Online Access:https://archium.ateneo.edu/theses-dissertations/92
http://rizalls.lib.admu.edu.ph/#section=resource&resourceid=1505444700&currentIndex=0&view=fullDetailsDetailsTab
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.theses-dissertations-10912021-04-11T05:22:02Z Detecting student carefulness in an educational game for physics BANAWAN, MICHELLE Carefulness is a construct that has been researched in the fields of education and social science. It is deemed as an important facet in learning as the more careful a student is, the less likely he/she will commit trivial errors or careless mistakes. Careful students have been seen to possess discipline more than students who are least careful. The general goal of this study is to create a detector for student carefulness in an educational game for Physics. A quantitative model for carefulness within Physics Playground is built and validated using semi-supervised learning, specifically self-training, to use both labeled and unlabeled data in building the carefulness detector. Nave bayes classification has been used as the modeling algorithm. Comparing the results of the iterations, it has been found that the models performance did not degrade, converged and resulted to improved predictions as compared to the base model/learner, which used purely labeled data or purely supervised nave bayes classification. Student samples from different cities in the Philippines have been used for this study. With self-training, carefulness was found to exist in the datasets of Philippine student samples and can be robustly detected by the features as hypothesized/modeled by Physics Playground developers and candidate features from related Social Science constructs as evidenced by the findings of this study. 2018-01-01T08:00:00Z text https://archium.ateneo.edu/theses-dissertations/92 http://rizalls.lib.admu.edu.ph/#section=resource&resourceid=1505444700&currentIndex=0&view=fullDetailsDetailsTab Theses and Dissertations (All) Archīum Ateneo Physics -- Study and teaching -- Activity programs Attention Vigilance (Psychology) Educational games -- Design and construction Supervised learning (Machine learning) Algorithms.
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Physics -- Study and teaching -- Activity programs
Attention
Vigilance (Psychology)
Educational games -- Design and construction
Supervised learning (Machine learning) Algorithms.
spellingShingle Physics -- Study and teaching -- Activity programs
Attention
Vigilance (Psychology)
Educational games -- Design and construction
Supervised learning (Machine learning) Algorithms.
BANAWAN, MICHELLE
Detecting student carefulness in an educational game for physics
description Carefulness is a construct that has been researched in the fields of education and social science. It is deemed as an important facet in learning as the more careful a student is, the less likely he/she will commit trivial errors or careless mistakes. Careful students have been seen to possess discipline more than students who are least careful. The general goal of this study is to create a detector for student carefulness in an educational game for Physics. A quantitative model for carefulness within Physics Playground is built and validated using semi-supervised learning, specifically self-training, to use both labeled and unlabeled data in building the carefulness detector. Nave bayes classification has been used as the modeling algorithm. Comparing the results of the iterations, it has been found that the models performance did not degrade, converged and resulted to improved predictions as compared to the base model/learner, which used purely labeled data or purely supervised nave bayes classification. Student samples from different cities in the Philippines have been used for this study. With self-training, carefulness was found to exist in the datasets of Philippine student samples and can be robustly detected by the features as hypothesized/modeled by Physics Playground developers and candidate features from related Social Science constructs as evidenced by the findings of this study.
format text
author BANAWAN, MICHELLE
author_facet BANAWAN, MICHELLE
author_sort BANAWAN, MICHELLE
title Detecting student carefulness in an educational game for physics
title_short Detecting student carefulness in an educational game for physics
title_full Detecting student carefulness in an educational game for physics
title_fullStr Detecting student carefulness in an educational game for physics
title_full_unstemmed Detecting student carefulness in an educational game for physics
title_sort detecting student carefulness in an educational game for physics
publisher Archīum Ateneo
publishDate 2018
url https://archium.ateneo.edu/theses-dissertations/92
http://rizalls.lib.admu.edu.ph/#section=resource&resourceid=1505444700&currentIndex=0&view=fullDetailsDetailsTab
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