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ON THE SAMPLE COMPLEXITY OF GRAPHICAL MODEL SELECTION FROM NON-STATIONARY SAMPLES

机译:关于非平稳样品的图形模型选择的样本复杂性

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摘要

We characterize the sample size required for accurate graphical model selection from non-stationary samples. The observed samples are modeled as a zero-mean Gaussian random process whose samples are uncorrelated but have different covariance matrices. This includes the case where observations form stationary or underspread processes. We derive a sufficient condition on the required sample size by analyzing a simple sparse neighborhood regression method.
机译:我们的特征在于从非固定式样本中精确图形模型选择所需的样本大小。观察到的样品被建模为零均衡的高斯随机过程,其样本不相关但具有不同的协方差矩阵。这包括观察结果形成固定或下涂层的过程。通过分析简单的稀疏邻域回归方法,我们可以在所需的样本大小上获得足够的条件。

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