Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system

This thesis presents research that combines the benefits of intelligent tutoring systems (ITS), conversational agents (CA) and learning styles theory by constructing a novel conversational intelligent tutoring system (CITS) called Oscar. Oscar CITS aims to imitate a human tutor by implicitly predict...

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Main Author: Latham, Annabel Marie
Published: Manchester Metropolitan University 2011
Subjects:
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.544307
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5443072016-09-03T03:33:12ZPersonalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring systemLatham, Annabel Marie2011This thesis presents research that combines the benefits of intelligent tutoring systems (ITS), conversational agents (CA) and learning styles theory by constructing a novel conversational intelligent tutoring system (CITS) called Oscar. Oscar CITS aims to imitate a human tutor by implicitly predicting individuals’ learning style preferences and adapting its tutoring style to suit them during a tutoring conversation. ITS are computerised learning systems that intelligently personalise tutoring based on learner characteristics such as existing knowledge and learning style. ITS are traditionally student-led, hyperlink-based learning systems that adapt the presentation of learning resources by reordering or hiding links. Research suggests that students learn more effectively when instruction matches their learning style, which is typically modelled explicitly using questionnaires or implicitly based on behaviour. Learning is a social process and natural language interfaces to ITS, such as CAs, allow students to construct knowledge through discussion. Existing CITS adapt tutoring according to student knowledge, emotions and mood, however no CITS adapts to learning styles. Oscar CITS models a human tutor by directing a tutoring conversation and automatically detecting and adapting to an individual’s learning styles. Original methodologies and architectures were developed for constructing an Oscar Predictive CITS and an Oscar Adaptive CITS. Oscar Predictive CITS uses knowledge captured from a learning styles model to dynamically predict learning styles from an individual’s tutoring dialogue. Oscar Adaptive CITS applies a novel adaptation algorithm to select the best tutoring style for each tutorial question. The Oscar CITS methodologies and architectures are independent of the learning styles model and subject domain. Empirical studies involving real students have validated the prediction and adaptation of learning styles in a real-world teaching/learning environment. The results show that learning styles can be successfully predicted from a natural language tutoring dialogue, and that adapting the tutoring style significantly improves learning performance.006.3Manchester Metropolitan Universityhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.544307http://e-space.mmu.ac.uk/313169/Electronic Thesis or Dissertation
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sources NDLTD
topic 006.3
spellingShingle 006.3
Latham, Annabel Marie
Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
description This thesis presents research that combines the benefits of intelligent tutoring systems (ITS), conversational agents (CA) and learning styles theory by constructing a novel conversational intelligent tutoring system (CITS) called Oscar. Oscar CITS aims to imitate a human tutor by implicitly predicting individuals’ learning style preferences and adapting its tutoring style to suit them during a tutoring conversation. ITS are computerised learning systems that intelligently personalise tutoring based on learner characteristics such as existing knowledge and learning style. ITS are traditionally student-led, hyperlink-based learning systems that adapt the presentation of learning resources by reordering or hiding links. Research suggests that students learn more effectively when instruction matches their learning style, which is typically modelled explicitly using questionnaires or implicitly based on behaviour. Learning is a social process and natural language interfaces to ITS, such as CAs, allow students to construct knowledge through discussion. Existing CITS adapt tutoring according to student knowledge, emotions and mood, however no CITS adapts to learning styles. Oscar CITS models a human tutor by directing a tutoring conversation and automatically detecting and adapting to an individual’s learning styles. Original methodologies and architectures were developed for constructing an Oscar Predictive CITS and an Oscar Adaptive CITS. Oscar Predictive CITS uses knowledge captured from a learning styles model to dynamically predict learning styles from an individual’s tutoring dialogue. Oscar Adaptive CITS applies a novel adaptation algorithm to select the best tutoring style for each tutorial question. The Oscar CITS methodologies and architectures are independent of the learning styles model and subject domain. Empirical studies involving real students have validated the prediction and adaptation of learning styles in a real-world teaching/learning environment. The results show that learning styles can be successfully predicted from a natural language tutoring dialogue, and that adapting the tutoring style significantly improves learning performance.
author Latham, Annabel Marie
author_facet Latham, Annabel Marie
author_sort Latham, Annabel Marie
title Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
title_short Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
title_full Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
title_fullStr Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
title_full_unstemmed Personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
title_sort personalising learning with dynamic prediction and adaptation to learning styles in a conversational intelligent tutoring system
publisher Manchester Metropolitan University
publishDate 2011
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.544307
work_keys_str_mv AT lathamannabelmarie personalisinglearningwithdynamicpredictionandadaptationtolearningstylesinaconversationalintelligenttutoringsystem
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