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Reverse engineering time series of gene expression data using Dynamic Bayesian networks and covariance matrix adaptation evolution strategy with explicit memory

机译:使用动态贝叶斯网络和协方识矩阵适应演化策略与显式记忆的逆向工程时间序列

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Dynamic Bayesian networks are of particular interest to reverse engineering of gene regulatory networks from temporal transcriptional data. However, the problem of learning the structure of these networks is quite challenging. This is mainly due to the high dimensionality of the search space that makes exhaustive methods for structure learning not practical. Consequently, heuristic techniques such as Hill Climbing are used for DBN structure learning. Hill Climbing is not an efficient method for this purpose as it is prone to get trapped in local optima and the learned network is not very accurate.
机译:动态贝叶斯网络特别感兴趣地从时间转录数据逆转基因监管网络的工程。然而,学习这些网络结构的问题非常具有挑战性。这主要是由于搜索空间的高度,这使得结构学习的详尽方法不实用。因此,爬山等启发式技术用于DBN结构学习。山坡不是一个有效的方法,因为它易于被困在本地最佳状态,学习网络不是非常准确的。

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