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 Informatio...
Abstract: In this paper, we introduce a framework for automatic collection and management of attenti...
Abstract: The paper outlines how attention metadata enables a tight integration between organisation...
Current E-Learning solutions are not sufficiently aware of the context of the learner, that is the i...
Nowadays, personalized education is a very hot topic in technology enhanced learning (TEL) research....
This paper presents the notion of contextualized attention metadata (CAM) in learning environments. ...
Abstract. In this demonstration we present our KnowSe framework, developed for observing, storing, a...
Proocedings of: 10th IEEE International Conference on Advanced Learning Technologies (ICALT 2010). S...
In order to successfully learn in a self-regulated way, self-monitoring of the learner and reflectio...
Self-regulated learning burdens the learner with configuring his own individual learning environment...
The information overload in learning and teaching scenarios is a main hindering factor for efficient...
The information overload in learning and teaching scenarios is a main hindering factor for efficient...
In order to exploit usage and attention metadata, one needs to define what properties of usage to us...
In order to exploit usage and attention metadata, one needs to define what properties of usage to us...
Successful self-regulated learning in a personalized learning environment (PLE) requires self-monito...
Vuorikari, R., & Berendt, B. (2009). Study on contexts in tracking usage and attention metadata in m...
Abstract: In this paper, we introduce a framework for automatic collection and management of attenti...
Abstract: The paper outlines how attention metadata enables a tight integration between organisation...
Current E-Learning solutions are not sufficiently aware of the context of the learner, that is the i...
Nowadays, personalized education is a very hot topic in technology enhanced learning (TEL) research....
This paper presents the notion of contextualized attention metadata (CAM) in learning environments. ...
Abstract. In this demonstration we present our KnowSe framework, developed for observing, storing, a...
Proocedings of: 10th IEEE International Conference on Advanced Learning Technologies (ICALT 2010). S...
In order to successfully learn in a self-regulated way, self-monitoring of the learner and reflectio...
Self-regulated learning burdens the learner with configuring his own individual learning environment...
The information overload in learning and teaching scenarios is a main hindering factor for efficient...
The information overload in learning and teaching scenarios is a main hindering factor for efficient...
In order to exploit usage and attention metadata, one needs to define what properties of usage to us...
In order to exploit usage and attention metadata, one needs to define what properties of usage to us...
Successful self-regulated learning in a personalized learning environment (PLE) requires self-monito...
Vuorikari, R., & Berendt, B. (2009). Study on contexts in tracking usage and attention metadata in m...
Abstract: In this paper, we introduce a framework for automatic collection and management of attenti...
Abstract: The paper outlines how attention metadata enables a tight integration between organisation...
Current E-Learning solutions are not sufficiently aware of the context of the learner, that is the i...