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Weighted ensemble learning of Bayesian network for gene regulatory networks

机译:用于基因调控网络的贝叶斯网络的加权集成学习

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摘要

Gene Regulatory Network (GRN) is known as the most adequate representation of genes' interactions based on microarray datasets. One of the most performing modeling tools that enable the inference of these networks is a Bayesian network (BN). When preceded by an efficient pre-processing step, BN learning can unveil possible relationships between key disease genes and allows biologists to analyze these interactions and to exploit them. However, the layout of microarray data is different from classic data. This particularity engenders challenges to BN learning in terms of dimensionality and data over-fitting.
机译:基因调控网络(GRN)被称为基于微阵列数据集的基因相互作用的最充分表示。贝叶斯网络(Bayesian network,BN)是能够推断这些网络的性能最高的建模工具之一。在进行有效的预处理步骤之前,BN学习可以揭示关键疾病基因之间的可能关系,并使生物学家能够分析这些相互作用并加以利用。但是,微阵列数据的布局不同于经典数据。这种特殊性在维度和数据过度拟合方面给BN学习带来了挑战。

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