Crisis management using persuasive Technology in a Mobile Game for children
Tóm tắt
Children need to be provided with sufficient facts regarding the hazardous effects that smoking can have on their health. To attain this, persuasive technology such as inducement and social pressure, can be employed to transform the mind-sets and personal conduct of the users. This research is aimed at providing a new approach for campaigning against smoking through the use of an interactive mobile game called Smoke Shooter. In this research, the principles of persuasive technology will be applied in Smoke Shooter to influence children to reject the smoking habit from an early age. The development and analysis of Smoke Shooter are presented. The results indicate that Smoke Shooter has gained positive feedback from the users.
Tài liệu tham khảo
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