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Efficient inference in matrix-variate Gaussian models with iid observation noise

机译:具有iid观测噪声的矩阵变量高斯模型的有效推断

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Inference in matrix-variate Gaussian models has major applications for multi-output prediction and joint learning of row and column covariances from matrix-variate data. Here, we discuss an approach for efficient inference in such models that explicitly account for iid observation noise. Computational tractability can be retained by exploiting the Kronecker product between row and column covariance matrices. Using this framework, we show how to generalize the Graphical Lasso in order to learn a sparse inverse covariance between features while accounting for a low-rank confounding covariance between samples. We show practical utility on applications to biology, where we model covariances with more than 100,000 dimensions. We find greater accuracy in recovering biological network structures and are able to better reconstruct the confounders.
机译:矩阵变量高斯模型的推论在多输出预测以及从矩阵变量数据联合学习行和列协方差方面具有重要的应用。在这里,我们讨论了一种在此类模型中有效推论的方法,该模型明确考虑了iid观察噪声。通过利用行和列协方差矩阵之间的Kronecker乘积,可以保留计算的可处理性。使用此框架,我们将展示如何概括图形化套索,以了解特征之间的稀疏逆协方差,同时考虑样本之间的低秩混杂协方差。我们展示了在生物学上的实用性,在生物学中我们可以对超过100,000个维度的协方差进行建模。我们发现恢复生物网络结构的准确性更高,并且能够更好地重建混杂因素。

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