Title :
Context Becomes Content: Sensor Data for Computer-Supported Reflective Learning
Author :
Muller, Lars ; Divitini, Monica ; Mora, Simone ; Rivera-Pelayo, Veronica ; Stork, Wilhelm
Author_Institution :
FZI Res. Center for Inf. Technol., Karlsruhe, Germany
fDate :
Jan.-March 1 2015
Abstract :
Wearable devices and ambient sensors can monitor a growing number of aspects of daily life and work. We propose to use this context data as content for learning applications in workplace settings to enable employees to reflect on experiences from their work. Learning by reflection is essential for today´s dynamic work environments, as employees have to adapt their behavior according to their experiences. Building on research on computer-supported reflective learning as well as persuasive technology, and inspired by the Quantified Self community, we present an approach to the design of tools supporting reflective learning at work by turning context information collected through sensors into learning content. The proposed approach has been implemented and evaluated with care staff in a care home and voluntary crisis workers. In both domains, tailored wearable sensors were designed and evaluated. The evaluations show that participants learned by reflecting on their work experiences based on their recorded context. The results highlight the potential of sensors to support learning from context data itself and outline lessons learned for the design of sensor-based capturing methods for reflective learning.
Keywords :
computer aided instruction; intelligent sensors; ubiquitous computing; wearable computers; ambient sensors; care home; care staff; computer-supported reflective learning; dynamic work environments; persuasive technology; quantified self community; sensor data; sensor-based capturing methods; tailored wearable sensors; voluntary crisis workers; wearable devices; Communities; Computational modeling; Computers; Context; Data visualization; Electronic mail; Employment; Reflective learning; context; learning content; pervasive computing; sensor data;
Journal_Title :
Learning Technologies, IEEE Transactions on
DOI :
10.1109/TLT.2014.2377732