Network Completion for Time Varying Genetic Networks

Complex, Intelligent, and Software Intensive Systems(2013)

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Abstract
In this paper, we consider the problem of completing and inferring regulatory networks with time varying structure. For this problem, we adopt the methodology of network completion, which is to apply a minimum amount of modifications to given networks so that the resulting network is most consistent with observed data. Network completion can also be applied to network inference by starting with the null network. In order to extend the methodology for completing and inferring time varying network structure, we employ our recent method of network completion, which was obtained by a combination of dynamic programming and least-squares fitting. We extend this method so that edges can be added and deleted at several time points. In order to identify these edges and time points, we develop a novel double dynamic programming method. We perform computational experiments on this method using some artificial data and real expression data.
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Key words
network completion,belief networks,time varying genetic networks,artificial data,varying network structure,time varying network structure,null network,double dynamic programming method,varying genetic networks,least squares approximations,recent method,dynamical bayesian network,network completion methodology,genetic algorithms,time point,least-squares fitting,inferring time,network inference,dynamic programming,resulting network,regulatory network,dynamic programming method,least squares fitting,time complexity,genetics,mathematical model,accuracy,time series analysis
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