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Informatics Network Representation Between Cells Using Probabilistic Graphical Models  

Ra, Sang-Dong (Department of Computer Engineering, College of Electronics and Information Engineering, Chosun University)
Shin, Hyun-Jae (Department of Chemical & Biochemical Engineering, Chosun University)
Cha, Wol-Suk (Department of Chemical & Biochemical Engineering, Chosun University)
Publication Information
KSBB Journal / v.21, no.4, 2006 , pp. 231-235 More about this Journal
Abstract
This study is a numerical representative modeling analysis for the application of the process that unravels networks between cells in genetics to web of informatics. Using the probabilistic graphical model, the insight from the data describing biological networks is used for making a probabilistic function. Rather than a complex network of cells, we reconstruct a simple lower-stage model and show a genetic representation level from the genetic based network logic. We made probabilistic graphical models from genetic data and extends them to genetic representation data in the method of network modeling in informatics
Keywords
Network search; genetics informatics; network motifs;
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