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Articles

Face-to-face collaborative learning supported by mobile phones

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Pages 351-363 | Received 30 Dec 2008, Accepted 24 Jun 2009, Published online: 05 Oct 2009
 

Abstract

The use of handheld computers in educational contexts has increased considerably in recent years and their value as a teaching tool has been confirmed by many positive experiences, particular within collaborative learning systems (Mobile Computer Supported Collaborative Learning [MCSCL]). The cost of the devices has hindered widespread use in schools, however, and cell phones have emerged as an attractive alternative. To test their functionality as a platform for collaborative educational activities, the authors adapted an existing Personal Digital Assistant (PDA) application for use on cell phones equipped with Wi-Fi. This article examines the problems of developing applications for this alternative technology and reports on a usability analysis of a collaborative classroom activity for teaching physics. The results confirm the viability of the cell phone platform, taking due account of the device's processing, network and interface limitations. With an appropriate design, users quickly master the technology, though a certain decline in efficiency relative to PDAs is observed.

Acknowledgments

This work was partially funded by FONDECYT-CONICYT grant No. 1080100 and by Microsoft Research and Microsoft Partners in Learning.

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