Web resources for Computer-Aided Instruction: a blended classification scheme

The huge quantity of data, media, applications, and services - in one word, resources - that are accumulating day after day on the Web makes it more and more difficult to search the network in an effective and helpful way. We usually spend a lot of the time trying to "filter out" what we c...

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Main Authors: Pacifico Cofrancesco, Mario Petrone, Filippo Bruni, Elena Caldirola
Format: Article
Language:English
Published: Italian e-Learning Association 2011-09-01
Series:Je-LKS : Journal of e-Learning and Knowledge Society
Online Access:https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/554
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spelling doaj-4dbd2429b08647a7bc6deb9f9ae580fa2020-11-25T02:07:15ZengItalian e-Learning AssociationJe-LKS : Journal of e-Learning and Knowledge Society1826-62231971-88292011-09-017310.20368/1971-8829/554Web resources for Computer-Aided Instruction: a blended classification schemePacifico Cofrancesco0Mario Petrone1Filippo Bruni2Elena Caldirola3Università degli Studi di PaviaUniversità degli Studi del MoliseUniversità degli Studi del MoliseUniversità degli Studi di PaviaThe huge quantity of data, media, applications, and services - in one word, resources - that are accumulating day after day on the Web makes it more and more difficult to search the network in an effective and helpful way. We usually spend a lot of the time trying to "filter out" what we consider "noise" added to the "good information" for which we are looking. Whatever the search domain, this messy and discouraging situation cannot be handled by general search engine, such as Google. We also face similar problems in the instructional domain. In this paper we focus on the need for creating tools that can help classifying and retrieving digital Web resources for Computer-Aided Instruction processes. We propose a strong, but simple and flexible, classification scheme, which can be easily and profitably used by a Web community (of teachers, learners, and others) to create a database of references to digital instructional resources. Our classification scheme uses a blended top-down/bottom-up approach with a Delicious-like annotation and tagging system not fully free, but based upon a controlled and predefined and expandable set of metadata.https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/554
collection DOAJ
language English
format Article
sources DOAJ
author Pacifico Cofrancesco
Mario Petrone
Filippo Bruni
Elena Caldirola
spellingShingle Pacifico Cofrancesco
Mario Petrone
Filippo Bruni
Elena Caldirola
Web resources for Computer-Aided Instruction: a blended classification scheme
Je-LKS : Journal of e-Learning and Knowledge Society
author_facet Pacifico Cofrancesco
Mario Petrone
Filippo Bruni
Elena Caldirola
author_sort Pacifico Cofrancesco
title Web resources for Computer-Aided Instruction: a blended classification scheme
title_short Web resources for Computer-Aided Instruction: a blended classification scheme
title_full Web resources for Computer-Aided Instruction: a blended classification scheme
title_fullStr Web resources for Computer-Aided Instruction: a blended classification scheme
title_full_unstemmed Web resources for Computer-Aided Instruction: a blended classification scheme
title_sort web resources for computer-aided instruction: a blended classification scheme
publisher Italian e-Learning Association
series Je-LKS : Journal of e-Learning and Knowledge Society
issn 1826-6223
1971-8829
publishDate 2011-09-01
description The huge quantity of data, media, applications, and services - in one word, resources - that are accumulating day after day on the Web makes it more and more difficult to search the network in an effective and helpful way. We usually spend a lot of the time trying to "filter out" what we consider "noise" added to the "good information" for which we are looking. Whatever the search domain, this messy and discouraging situation cannot be handled by general search engine, such as Google. We also face similar problems in the instructional domain. In this paper we focus on the need for creating tools that can help classifying and retrieving digital Web resources for Computer-Aided Instruction processes. We propose a strong, but simple and flexible, classification scheme, which can be easily and profitably used by a Web community (of teachers, learners, and others) to create a database of references to digital instructional resources. Our classification scheme uses a blended top-down/bottom-up approach with a Delicious-like annotation and tagging system not fully free, but based upon a controlled and predefined and expandable set of metadata.
url https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/554
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