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Target Advertisement Service using a Viewer's Profile Reasoning  

Kim Munjo (School of Engineering Information and Communication University)
Im Jeongyeon (School of Engineering Information and Communication University)
Kang Sanggil (Department of Computer, College of Information Engineering University of Suwon)
Kim Munchrul (School of Engineering Information and Communication University)
Kang Kyungok (Broadcasting Media Research Department Electronics and Telecommunications Research Institute)
Publication Information
Journal of Broadcast Engineering / v.10, no.1, 2005 , pp. 43-56 More about this Journal
Abstract
In the existing broadcasting environment, it is not easy to serve the bi-directional service between a broadcasting server and a TV audience. In the uni-directional broadcasting environments, almost TV programs are scheduled depending on the viewers' popular watching time, and the advertisement contents in these TV programs are mainly arranged by the popularity and the ages of the audience. The audiences make an effort to sort and select their favorite programs. However, the advertisement programs which support the TV program the audience want are not served to the appropriate audiences efficiently. This randomly provided advertisement contents can occur to the audiences' indifference and avoidance. In this paper, we propose the target advertisement service for the appropriate distribution of the advertisement contents. The proposed target advertisement service estimates the audience's profile without any issuing the private information and provides the target-advertised contents by using his/her estimated profile. For the experimental results, we used the real audiences' TV usage history such as the ages, fonder and time of the programs from AC Neilson Korea. And we show the accuracy of the proposed target advertisement service algorithm. NDS (Normalized Distance Sum) and the Vector correlation method, and implementation of our target advertisement service system.
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