Title of article :
User Context and Personalized Learning: a Federation of Contextualized Attention Metadata
Author/Authors :
Butoianu, Valentin Université Paul Sabatier - Institut de Recherche en Informatique de Toulouse, France , Vidal, Philippe Université Paul Sabatier - Institut de Recherche en Informatique de Toulouse, France , Verbert, Katrien , Duval, Erik , Broisin, Julien Université Paul Sabatier - Institut de Recherche en Informatique de Toulouse, France
From page :
2252
To page :
2271
Abstract :
Abstract: Nowadays, personalized education is a very hot topic in technology enhanced learning (TEL) research. To support students during their learning process, the first step consists in capturing the context in which they evolve. Users typically operate in a heterogeneous environment when learning, including learning tools such as Learning Management Systems and non-learning tools and services such as e-mails, instant messaging, or web pages. Thus, user attention in a given context defines the Contextualized Attention Metadata (CAM). Various initiatives and projects allow capturing CAMs in a knowledge workers’ environment not only in the TEL area, but also in other domains like Knowledge Work Support, Personal Information Management and Information Retrieval. After reviewing main existing approaches according to some specific criteria that are of main interest for capturing and sharing user contexts, we present in this paper a framework able to gather CAMs produced by any tool or computer system. The framework is built on the Web-Based Enterprise Management (WBEM) standard dedicated to system, network and application management. Attention information specific to heterogeneous tools are represented as a unified and extensible structure, and stored into a central repository compliant with the above-mentioned standard. To facilitate access to this attention repository, we introduced a middleware layer composed of two dynamic services: the first service allows users to define the attention data they want to collect, whereas the second service is dedicated to receive and retrieve the traces produced by computer systems. An implementation for collecting and storing CAM data generated by the Ariadne Finder and Moodle validates our approach.
Keywords :
Technology Enhanced Learning , Contextualized Attention Metadata
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2661695
Link To Document :
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