Student Modeling for English Language Learners in a Moved By Reading Intervention
abstract: EMBRACE (Enhanced Moved By Reading to Accelerate Comprehension in English) is an IPad application that uses the Moved By Reading strategy to help improve the reading comprehension skills of bilingual (Spanish speaking) English Language Learners (ELLs). In EMBRACE, students read the text of...
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ndltd-asu.edu-item-402702018-06-22T03:07:45Z Student Modeling for English Language Learners in a Moved By Reading Intervention abstract: EMBRACE (Enhanced Moved By Reading to Accelerate Comprehension in English) is an IPad application that uses the Moved By Reading strategy to help improve the reading comprehension skills of bilingual (Spanish speaking) English Language Learners (ELLs). In EMBRACE, students read the text of a story and then move images corresponding to the text that they read. According to the embodied cognition theory, this grounds reading comprehension in physical experiences and thus is more engaging. In this thesis, I used the log data from 20 students in grades 2-5 to design a skill model for a student using EMBRACE. A skill model is the set of knowledge components that a student needs to master in order to comprehend the text in EMBRACE. A good skill model will improve understanding of the mistakes students make and thus aid in the design of useful feedback for the student.. In this context, the skill model consists of vocabulary and syntax associated with the steps that students performed. I mapped each step in EMBRACE to one or more skills (vocabulary and syntax) from the model. After every step, the skill level is updated in the model. Thus, if a student answered the previous step incorrectly, the corresponding skills are decremented and if the student answered the previous question correctly, the corresponding skills are incremented, through the Bayesian Knowledge Tracing algorithm. I then correlated the students’ predicted scores (computed from their skill levels) to their posttest scores. I evaluated the students’ predicted scores (computed from their skill levels) by comparing them to their posttest scores. The two sets of scores were not highly correlated, but the results gave insights into potential improvements that could be made to the system with respect to user interaction, posttest scores and modeling algorithm. Dissertation/Thesis Furtado, Nicolette Dolores (Author) Walker, Erin (Advisor) Hsiao, Ihan (Committee member) Restrepo, M. Adelaida (Committee member) Arizona State University (Publisher) Computer science Bayesian Knowledge Tracing Educational Data Mining EMBRACE Intelligent Tutoring Systems Moved By Reading eng 66 pages Masters Thesis Computer Science 2016 Masters Thesis http://hdl.handle.net/2286/R.I.40270 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2016 |
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English |
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Dissertation |
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Computer science Bayesian Knowledge Tracing Educational Data Mining EMBRACE Intelligent Tutoring Systems Moved By Reading |
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Computer science Bayesian Knowledge Tracing Educational Data Mining EMBRACE Intelligent Tutoring Systems Moved By Reading Student Modeling for English Language Learners in a Moved By Reading Intervention |
description |
abstract: EMBRACE (Enhanced Moved By Reading to Accelerate Comprehension in English) is an IPad application that uses the Moved By Reading strategy to help improve the reading comprehension skills of bilingual (Spanish speaking) English Language Learners (ELLs). In EMBRACE, students read the text of a story and then move images corresponding to the text that they read. According to the embodied cognition theory, this grounds reading comprehension in physical experiences and thus is more engaging.
In this thesis, I used the log data from 20 students in grades 2-5 to design a skill model for a student using EMBRACE. A skill model is the set of knowledge components that a student needs to master in order to comprehend the text in EMBRACE. A good skill model will improve understanding of the mistakes students make and thus aid in the design of useful feedback for the student.. In this context, the skill model consists of vocabulary and syntax associated with the steps that students performed. I mapped each step in EMBRACE to one or more skills (vocabulary and syntax) from the model. After every step, the skill level is updated in the model. Thus, if a student answered the previous step incorrectly, the corresponding skills are decremented and if the student answered the previous question correctly, the corresponding skills are incremented, through the Bayesian Knowledge Tracing algorithm.
I then correlated the students’ predicted scores (computed from their skill levels) to their posttest scores. I evaluated the students’ predicted scores (computed from their skill levels) by comparing them to their posttest scores. The two sets of scores were not highly correlated, but the results gave insights into potential improvements that could be made to the system with respect to user interaction, posttest scores and modeling algorithm. === Dissertation/Thesis === Masters Thesis Computer Science 2016 |
author2 |
Furtado, Nicolette Dolores (Author) |
author_facet |
Furtado, Nicolette Dolores (Author) |
title |
Student Modeling for English Language Learners in a Moved By Reading Intervention |
title_short |
Student Modeling for English Language Learners in a Moved By Reading Intervention |
title_full |
Student Modeling for English Language Learners in a Moved By Reading Intervention |
title_fullStr |
Student Modeling for English Language Learners in a Moved By Reading Intervention |
title_full_unstemmed |
Student Modeling for English Language Learners in a Moved By Reading Intervention |
title_sort |
student modeling for english language learners in a moved by reading intervention |
publishDate |
2016 |
url |
http://hdl.handle.net/2286/R.I.40270 |
_version_ |
1718701238759981056 |