Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System

This paper presents results from a preliminary analysis of interaction and human observation data gathered from students using an Aplusix, an intelligent tutoring system for algebra. Towards the development of automatic detectors of behavior and affect, this study tried to determine whether it was p...

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Main Authors: Rodrigo, Ma. Mercedes T, Anglo, Elizabeth A, Sugay, Jessica, Baker, Ryan S
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Published: Archīum Ateneo 2008
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Online Access:https://archium.ateneo.edu/discs-faculty-pubs/110
http://penoy.admu.edu.ph/~didith/2008UnsupervisedClustering.pdf
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spelling ph-ateneo-arc.discs-faculty-pubs-11092020-06-24T07:26:00Z Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System Rodrigo, Ma. Mercedes T Anglo, Elizabeth A Sugay, Jessica Baker, Ryan S This paper presents results from a preliminary analysis of interaction and human observation data gathered from students using an Aplusix, an intelligent tutoring system for algebra. Towards the development of automatic detectors of behavior and affect, this study tried to determine whether it was possible to identify distinct groups of students based on interaction logs alone. Using unsupervised clustering, we were able to identify that student behaviors within the software cluster into two categories, Clusters 0 and 1, associated with differing higher-level behaviors and affective states. Cluster 0 tended to reflect more collaborative work, whereas Cluster 1 reflected more solitary work. Cluster 1 students tended to exhibit more flow, suggesting that students in flow tend to work in a more individual fashion. An examination of the keystrokes used by each group showed that Cluster 0 used the arrow keys and cursor keys significantly more than Cluster 1. The Cluster 1, on the other hand, tended to type more mathematical operators or use the duplicate command more frequently than Cluster 0. This implies that frequent use of mathematical operators and frequent duplication of the problem may be evidence of flow within Aplusix. 2008-01-01T08:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/110 http://penoy.admu.edu.ph/~didith/2008UnsupervisedClustering.pdf Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Affect Aplusix learner modeling interaction logs clustering Computer Sciences
institution Ateneo De Manila University
building Ateneo De Manila University Library
country Philippines
collection archium.Ateneo Institutional Repository
topic Affect
Aplusix
learner modeling
interaction logs
clustering
Computer Sciences
spellingShingle Affect
Aplusix
learner modeling
interaction logs
clustering
Computer Sciences
Rodrigo, Ma. Mercedes T
Anglo, Elizabeth A
Sugay, Jessica
Baker, Ryan S
Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System
description This paper presents results from a preliminary analysis of interaction and human observation data gathered from students using an Aplusix, an intelligent tutoring system for algebra. Towards the development of automatic detectors of behavior and affect, this study tried to determine whether it was possible to identify distinct groups of students based on interaction logs alone. Using unsupervised clustering, we were able to identify that student behaviors within the software cluster into two categories, Clusters 0 and 1, associated with differing higher-level behaviors and affective states. Cluster 0 tended to reflect more collaborative work, whereas Cluster 1 reflected more solitary work. Cluster 1 students tended to exhibit more flow, suggesting that students in flow tend to work in a more individual fashion. An examination of the keystrokes used by each group showed that Cluster 0 used the arrow keys and cursor keys significantly more than Cluster 1. The Cluster 1, on the other hand, tended to type more mathematical operators or use the duplicate command more frequently than Cluster 0. This implies that frequent use of mathematical operators and frequent duplication of the problem may be evidence of flow within Aplusix.
format text
author Rodrigo, Ma. Mercedes T
Anglo, Elizabeth A
Sugay, Jessica
Baker, Ryan S
author_facet Rodrigo, Ma. Mercedes T
Anglo, Elizabeth A
Sugay, Jessica
Baker, Ryan S
author_sort Rodrigo, Ma. Mercedes T
title Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System
title_short Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System
title_full Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System
title_fullStr Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System
title_full_unstemmed Use of Unsupervised Clustering to Characterize Learner Behaviors and Affective States while Using an Intelligent Tutoring System
title_sort use of unsupervised clustering to characterize learner behaviors and affective states while using an intelligent tutoring system
publisher Archīum Ateneo
publishDate 2008
url https://archium.ateneo.edu/discs-faculty-pubs/110
http://penoy.admu.edu.ph/~didith/2008UnsupervisedClustering.pdf
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