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A Study on the design and implementation of Intelligent Advertisement Operation System based on User's Feedback in Mobile Environments
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 Title & Authors
A Study on the design and implementation of Intelligent Advertisement Operation System based on User's Feedback in Mobile Environments
Lee, Yong-Ki; Moon, Nam-Mee;
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 Abstract
In this paper, the design of intelligent_advertisement_operation system(IAdOS) based on user's feedback is proposed for mobile environments. The proposed system stores the advertising contents created by the advertising provider and recommends the personalized advertising contents by analyzing the context information, and then feedback information of the advertisements. Since the proposed system which can recommends provide the smart advertisement contents based on personal preference, it is expected to contribute the new service model development of in the field of advertising market.
 Keywords
Mobile;Advertisement;Profile;Feedback;Intelligent;
 Language
Korean
 Cited by
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