Enregistré dans:
Détails bibliographiques
Auteur principal: Akbar, Monika
Format: Recurso educativo Open Access
Langue:en
Publié: 2013
Sujets:
Accès en ligne:https://eric.ed.gov/?id=ED557846
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1867181301761572864
author Akbar, Monika
author_facet Akbar, Monika
Akbar, Monika
collection Education Resources Information Center
contents Integrating Community with Collections in Educational Digital Libraries Akbar, Monika Electronic Libraries Information Needs Library Materials Library Services Social Networks Educational Resources Internet Users (Information) Information Seeking Some classes of Internet users have specific information needs and specialized information-seeking behaviors. For example, educators who are designing a course might create a syllabus, recommend books, create lecture slides, and use tools as lecture aid. All of these resources are available online, but are scattered across a large number of websites. Collecting, linking, and presenting the disparate items related to a given course topic within a digital library will help educators in finding quality educational material. Content quality is important for users. The results of popular search engines typically fail to reflect community input regarding quality of the content. To disseminate information related to the quality of available resources, users need a common place to meet and share their experiences. Online communities can support knowledge-sharing practices (e.g., reviews, ratings). We focus on finding the information needs of educators and helping users to identify potentially useful resources within an educational digital library. This research builds upon the existing 5S digital library (DL) framework. We extend core DL services (e.g., index, search, browse) to include information from latent user groups. We propose a formal definition for the next generation of educational digital libraries. We extend one aspect of this definition to study methods that incorporate collective knowledge within the DL framework. We introduce the concept of deduced social network (DSN)--a network that uses navigation history to deduce connections that are prevalent in an educational digital library. Knowledge gained from the DSN can be used to tailor DL services so as to guide users through the vast information space of educational digital libraries. As our testing ground, we use the AlgoViz and Ensemble portals, both of which have large collections of educational resources and seek to support online communities. We developed two applications, ranking of search results and recommendation, that use the information derived from DSNs. The revised ranking system incorporates social trends into the system, whereas the recommendation system assigns users to a specific group for content recommendation. Both applications show enhanced performance when DSN-derived information is incorporated. This work received support from the National Science Foundation under Grant Numbers DUE-0836940, DUE-0937863, and DUE-0840719. [The dissertation citations contained here are published with the permission of ProQuest LLC. Further reproduction is prohibited without permission. Copies of dissertations may be obtained by Telephone (800) 1-800-521-0600. Web page: http://www.proquest.com/en-US/products/dissertations/individuals.shtml.]
format Recurso educativo Open Access
id eric_ED557846
institution ERIC Institute of Education Sciences
language en
publishDate 2013
record_format eric
spellingShingle Integrating Community with Collections in Educational Digital Libraries
Akbar, Monika
Electronic Libraries
Information Needs
Library Materials
Library Services
Social Networks
Educational Resources
Internet
Users (Information)
Information Seeking
Integrating Community with Collections in Educational Digital Libraries Akbar, Monika Electronic Libraries Information Needs Library Materials Library Services Social Networks Educational Resources Internet Users (Information) Information Seeking Some classes of Internet users have specific information needs and specialized information-seeking behaviors. For example, educators who are designing a course might create a syllabus, recommend books, create lecture slides, and use tools as lecture aid. All of these resources are available online, but are scattered across a large number of websites. Collecting, linking, and presenting the disparate items related to a given course topic within a digital library will help educators in finding quality educational material. Content quality is important for users. The results of popular search engines typically fail to reflect community input regarding quality of the content. To disseminate information related to the quality of available resources, users need a common place to meet and share their experiences. Online communities can support knowledge-sharing practices (e.g., reviews, ratings). We focus on finding the information needs of educators and helping users to identify potentially useful resources within an educational digital library. This research builds upon the existing 5S digital library (DL) framework. We extend core DL services (e.g., index, search, browse) to include information from latent user groups. We propose a formal definition for the next generation of educational digital libraries. We extend one aspect of this definition to study methods that incorporate collective knowledge within the DL framework. We introduce the concept of deduced social network (DSN)--a network that uses navigation history to deduce connections that are prevalent in an educational digital library. Knowledge gained from the DSN can be used to tailor DL services so as to guide users through the vast information space of educational digital libraries. As our testing ground, we use the AlgoViz and Ensemble portals, both of which have large collections of educational resources and seek to support online communities. We developed two applications, ranking of search results and recommendation, that use the information derived from DSNs. The revised ranking system incorporates social trends into the system, whereas the recommendation system assigns users to a specific group for content recommendation. Both applications show enhanced performance when DSN-derived information is incorporated. This work received support from the National Science Foundation under Grant Numbers DUE-0836940, DUE-0937863, and DUE-0840719. [The dissertation citations contained here are published with the permission of ProQuest LLC. Further reproduction is prohibited without permission. Copies of dissertations may be obtained by Telephone (800) 1-800-521-0600. Web page: http://www.proquest.com/en-US/products/dissertations/individuals.shtml.]
title Integrating Community with Collections in Educational Digital Libraries
topic Electronic Libraries
Information Needs
Library Materials
Library Services
Social Networks
Educational Resources
Internet
Users (Information)
Information Seeking
url https://eric.ed.gov/?id=ED557846