Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground
Incubation Effect (IE) refers to the phenomenon where one gets stuck in a problem-solving activity, decides to take a break, and afterwards revisits the unsolved problem and eventually solves it. While studies on IE were all limited to traditional classroom activities, this research aimed to continu...
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ph-ateneo-arc.discs-faculty-pubs-11592020-06-30T02:55:02Z Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground Talandron-Felipe, May Marie Rodrigo, Ma. Mercedes T Incubation Effect (IE) refers to the phenomenon where one gets stuck in a problem-solving activity, decides to take a break, and afterwards revisits the unsolved problem and eventually solves it. While studies on IE were all limited to traditional classroom activities, this research aimed to continue the study of IE in the context of a computer-based learning environment and find features that would predict the incidence of revisiting an unsolved problem and its positive outcome. A prior IE model was developed using a logistic regression but the hand-crafted features used were from aggregated data and do not reflect specific characteristics of students’ actions. Further analysis was conducted in this study and used a deep learning technique which significantly improved the performance of the IE model. In order to interpret the learned features of the neural network, a combination of dimension reduction, visualization technique, and clustering were used. It was found that the coarse-grained features are consistent with the fine-grained features but action level features were also discovered which provided more evidence that there was an improvement on how students tried to solve the problem after incubation 2019-01-01T08:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/160 https://ir.canterbury.ac.nz/bitstream/handle/10092/17831/ICCE2019-Faiza-cameraready.pdf?sequence=3#page=48 Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Computer Sciences |
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Computer Sciences Talandron-Felipe, May Marie Rodrigo, Ma. Mercedes T Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground |
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Incubation Effect (IE) refers to the phenomenon where one gets stuck in a problem-solving activity, decides to take a break, and afterwards revisits the unsolved problem and eventually solves it. While studies on IE were all limited to traditional classroom activities, this research aimed to continue the study of IE in the context of a computer-based learning environment and find features that would predict the incidence of revisiting an unsolved problem and its positive outcome. A prior IE model was developed using a logistic regression but the hand-crafted features used were from aggregated data and do not reflect specific characteristics of students’ actions. Further analysis was conducted in this study and used a deep learning technique which significantly improved the performance of the IE model. In order to interpret the learned features of the neural network, a combination of dimension reduction, visualization technique, and clustering were used. It was found that the coarse-grained features are consistent with the fine-grained features but action level features were also discovered which provided more evidence that there was an improvement on how students tried to solve the problem after incubation |
format |
text |
author |
Talandron-Felipe, May Marie Rodrigo, Ma. Mercedes T |
author_facet |
Talandron-Felipe, May Marie Rodrigo, Ma. Mercedes T |
author_sort |
Talandron-Felipe, May Marie |
title |
Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground |
title_short |
Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground |
title_full |
Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground |
title_fullStr |
Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground |
title_full_unstemmed |
Leveraging LSTM in the fine-grained analysis of the Incubation Effect in Physics Playground |
title_sort |
leveraging lstm in the fine-grained analysis of the incubation effect in physics playground |
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Archīum Ateneo |
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2019 |
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https://archium.ateneo.edu/discs-faculty-pubs/160 https://ir.canterbury.ac.nz/bitstream/handle/10092/17831/ICCE2019-Faiza-cameraready.pdf?sequence=3#page=48 |
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