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Ultranet: efficient solver for the sparse inverse covariance selection problem in gene network modeling

机译:Ultranet:基因网络建模中稀疏逆协方差选择问题的有效求解器

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摘要

Graphical Gaussian models (GGMs) are a promising approach to identify gene regulatory networks. Such models can be robustly inferred by solving the sparse inverse covariance selection (SICS) problem. With the high dimensionality of genomics data, fast methods capable of solving large instances of SICS are needed. We developed a novel network modeling tool, Ultranet, that solves the SICS problem with significantly improved efficiency. Ultranet combines a range of mathematical and programmatical techniques, exploits the structure of the SICS problem and enables computation of genome-scale GGMs without compromising analytic accuracy.
机译:图形高斯模型(GGM)是识别基因调控网络的一种有前途的方法。通过解决稀疏逆协方差选择(SICS)问题,可以可靠地推论此类模型。随着基因组数据的高维化,需要能够解决SICS大型实例的快速方法。我们开发了一种新颖的网络建模工具Ultranet,可以显着提高效率来解决SICS问题。 Ultranet结合了一系列数学和编程技术,利用SICS问题的结构,并能够在不影响分析准确性的情况下计算基因组规模的GGM。

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