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Sparse Gaussian graphical model with missing values

机译:值缺失的稀疏高斯图形模型

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Recent advances in measurement technology have enabled us to measure various omic layers, such as genome, transcriptome, proteome, and metabolome layers. The demand for data analysis to determine the network structure of the interaction between molecular species is increasing. The Gaussian graphical model is one method of estimating the network structure. However, biological omics data sets tend to include missing values, which is conventionally handled by preprocessing. We propose a novel method by which to estimate the network structure together with missing values by combining a sparse graphical model and matrix factorization. The proposed method was validated by artificial data sets and was applied to a signal transduction data set as a test run.
机译:测量技术的最新进展使我们能够测量各种组蛋白层,例如基因组,转录组,蛋白质组和代谢组。用于确定分子种类之间相互作用的网络结构的数据分析的需求正在增加。高斯图形模型是估计网络结构的一种方法。但是,生物组学数据集倾向于包含缺失值,而缺失值通常是通过预处理来处理的。我们提出了一种新颖的方法,通过将稀疏的图形模型和矩阵分解相结合,可以估计网络结构以及缺失值。通过人工数据集验证了该方法的有效性,并将其应用于信号转导数据集作为测试运行。

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