Virtual mentor and media structuralization theory

In the 21st century, e-Learning has been widely used in both academic education and corporate training. However, many e-Learning systems present multimedia instructional material in a static, passive, and unstructured manner, giving learners little control over learning content and process. As a res...

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Main Author: Zhang, Dongsong
Other Authors: Nunamaker, Jay F.
Language:en_US
Published: The University of Arizona. 2002
Subjects:
Online Access:http://hdl.handle.net/10150/289810
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-2898102015-10-23T05:13:04Z Virtual mentor and media structuralization theory Zhang, Dongsong Nunamaker, Jay F. Information Science. In the 21st century, e-Learning has been widely used in both academic education and corporate training. However, many e-Learning systems present multimedia instructional material in a static, passive, and unstructured manner, giving learners little control over learning content and process. As a result, higher effectiveness and greater societal potential of e-Learning are hindered. This thesis makes two primary contributions to this trend. From a theoretical perspective, we propose a new concept called "Virtual Mentor (VM)" and a research framework called Media StructuRalization Theory (MSRT). The VM refers to a multimedia-based e-Learning environment that emphasizes interaction, flexibility, and self-direction. The MSRT aims at providing guidance toward effective design and implementation of virtual mentor systems. From a technical perspective, we have developed a prototype VM system called Learning by Asking (LBA), which integrates various information technologies. The major technical innovation is adoption of a novel natural language approach to content-based video indexing and retrieval. We conducted empirical studies to validate a few propositions of the MSRT. The results demonstrated that structuring of multimedia content and the use of instructional videos improved learning outcome significantly. The learning performance of students in an eLearning environment with content structuring and synchronized multimedia instruction is comparable to that of students in traditional classrooms. Our research was enabled by the LBA system, which provides a learner-centered, self-paced, and interactive online learning environment. In order to enhance personalized and just-in-time learning, the LBA system allows learners to ask questions in conversational English and watch appropriate multimedia instructions retrieved by LBA that address learners' interests. Traditional video indexing and retrieval approaches are based on scene changes or other image cues in videos that are not normally available in video lectures. We propose a novel two-phase natural language approach to identifying relevant video clips for content-based video indexing and retrieval. It integrates natural language processing, named entity extraction, frame-based indexing, and information retrieval techniques. The preliminary evaluation reveals that this approach is better than the traditional keyword-based approach in terms of precision and recall. 2002 text Dissertation-Reproduction (electronic) http://hdl.handle.net/10150/289810 3060938 .b43034950 en_US Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en_US
sources NDLTD
topic Information Science.
spellingShingle Information Science.
Zhang, Dongsong
Virtual mentor and media structuralization theory
description In the 21st century, e-Learning has been widely used in both academic education and corporate training. However, many e-Learning systems present multimedia instructional material in a static, passive, and unstructured manner, giving learners little control over learning content and process. As a result, higher effectiveness and greater societal potential of e-Learning are hindered. This thesis makes two primary contributions to this trend. From a theoretical perspective, we propose a new concept called "Virtual Mentor (VM)" and a research framework called Media StructuRalization Theory (MSRT). The VM refers to a multimedia-based e-Learning environment that emphasizes interaction, flexibility, and self-direction. The MSRT aims at providing guidance toward effective design and implementation of virtual mentor systems. From a technical perspective, we have developed a prototype VM system called Learning by Asking (LBA), which integrates various information technologies. The major technical innovation is adoption of a novel natural language approach to content-based video indexing and retrieval. We conducted empirical studies to validate a few propositions of the MSRT. The results demonstrated that structuring of multimedia content and the use of instructional videos improved learning outcome significantly. The learning performance of students in an eLearning environment with content structuring and synchronized multimedia instruction is comparable to that of students in traditional classrooms. Our research was enabled by the LBA system, which provides a learner-centered, self-paced, and interactive online learning environment. In order to enhance personalized and just-in-time learning, the LBA system allows learners to ask questions in conversational English and watch appropriate multimedia instructions retrieved by LBA that address learners' interests. Traditional video indexing and retrieval approaches are based on scene changes or other image cues in videos that are not normally available in video lectures. We propose a novel two-phase natural language approach to identifying relevant video clips for content-based video indexing and retrieval. It integrates natural language processing, named entity extraction, frame-based indexing, and information retrieval techniques. The preliminary evaluation reveals that this approach is better than the traditional keyword-based approach in terms of precision and recall.
author2 Nunamaker, Jay F.
author_facet Nunamaker, Jay F.
Zhang, Dongsong
author Zhang, Dongsong
author_sort Zhang, Dongsong
title Virtual mentor and media structuralization theory
title_short Virtual mentor and media structuralization theory
title_full Virtual mentor and media structuralization theory
title_fullStr Virtual mentor and media structuralization theory
title_full_unstemmed Virtual mentor and media structuralization theory
title_sort virtual mentor and media structuralization theory
publisher The University of Arizona.
publishDate 2002
url http://hdl.handle.net/10150/289810
work_keys_str_mv AT zhangdongsong virtualmentorandmediastructuralizationtheory
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