Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning

Student modeling has been gaining interest among researchers recently. A lot of work has been done on exploring value of interface actions on predicting learning. The focus of this thesis is on using eye-tracking data and action logs for building classifies to infer a student???s learning performa...

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Main Author: Bondareva, Daria
Language:English
Published: University of British Columbia 2014
Online Access:http://hdl.handle.net/2429/46258
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-BVAU.2429-462582014-03-26T03:40:06Z Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning Bondareva, Daria Student modeling has been gaining interest among researchers recently. A lot of work has been done on exploring value of interface actions on predicting learning. The focus of this thesis is on using eye-tracking data and action logs for building classifies to infer a student???s learning performance during interaction with MetaTutor, an Intelligent Tutoring System( ITS) that scaffolds self-regulated learning (SRL). Research has shown that eye tracking can be a valuable source for predicting learning for certain learning environments. In this thesis we extend these results by showing that modeling based on eye-tracking data is a valuable approach to predicting learning for another type of ITS, a hypermedia learning environment. We use data from 50 students (collected by a research team at McGill University, which also designed MetaTutor) to compare the performance of actions and eye-tracking data (1) after a complete interaction, and (2) during interaction when different amounts of gaze and action data are available. We built several classifiers using common machine learning algorithms and techniques, with feature sets that are based on (1) eye-tracking data only, (2) actions data only and (3) eye-tracking and actions data combined. The results we found show that eye-tracking data brings important information in predicting student???s performance for an ITS supporting SRL in both overall and over time analysis. The features used for training classifiers suggest that usage of SRL tools available in MetaTutor can be a good predictor of learning. 2014-03-18T21:59:47Z 2014-03-18T21:59:47Z 2014 2014-03-18 2014-05 Electronic Thesis or Dissertation http://hdl.handle.net/2429/46258 eng http://creativecommons.org/licenses/by-nc-nd/2.5/ca/ Attribution-NonCommercial-NoDerivs 2.5 Canada University of British Columbia
collection NDLTD
language English
sources NDLTD
description Student modeling has been gaining interest among researchers recently. A lot of work has been done on exploring value of interface actions on predicting learning. The focus of this thesis is on using eye-tracking data and action logs for building classifies to infer a student???s learning performance during interaction with MetaTutor, an Intelligent Tutoring System( ITS) that scaffolds self-regulated learning (SRL). Research has shown that eye tracking can be a valuable source for predicting learning for certain learning environments. In this thesis we extend these results by showing that modeling based on eye-tracking data is a valuable approach to predicting learning for another type of ITS, a hypermedia learning environment. We use data from 50 students (collected by a research team at McGill University, which also designed MetaTutor) to compare the performance of actions and eye-tracking data (1) after a complete interaction, and (2) during interaction when different amounts of gaze and action data are available. We built several classifiers using common machine learning algorithms and techniques, with feature sets that are based on (1) eye-tracking data only, (2) actions data only and (3) eye-tracking and actions data combined. The results we found show that eye-tracking data brings important information in predicting student???s performance for an ITS supporting SRL in both overall and over time analysis. The features used for training classifiers suggest that usage of SRL tools available in MetaTutor can be a good predictor of learning.
author Bondareva, Daria
spellingShingle Bondareva, Daria
Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning
author_facet Bondareva, Daria
author_sort Bondareva, Daria
title Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning
title_short Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning
title_full Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning
title_fullStr Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning
title_full_unstemmed Eye-tracking as a source of information for automatically predicting user learning with MetaTutor, an intelligent tutoring system to support self-regulated learning
title_sort eye-tracking as a source of information for automatically predicting user learning with metatutor, an intelligent tutoring system to support self-regulated learning
publisher University of British Columbia
publishDate 2014
url http://hdl.handle.net/2429/46258
work_keys_str_mv AT bondarevadaria eyetrackingasasourceofinformationforautomaticallypredictinguserlearningwithmetatutoranintelligenttutoringsystemtosupportselfregulatedlearning
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