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Bayesian inference in linear models with a random Gaussian matrix : Algorithms and complexity

机译:贝叶斯推理在线性模型,随机高斯矩阵:算法和复杂性

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We consider the Bayesian inference of a random Gaussian vector in a linear model with a random Gaussian matrix. We review two approaches to finding the MAP estimator for this model. We propose improved versions of these approaches with reduced complexity. Next we analyze their complexity and convergence properties. Then we derive the MAP estimator in the setting in which the variance of the noise is unknown. Simulation results presented compare the performance in terms of estimation error of the approaches.
机译:我们考虑用随机高斯矩阵的线性模型中随机高斯向量的贝叶斯推断。我们查看两种方法来查找此模型的地图估计。我们提出了可降低复杂性的改进版本的方法。接下来我们分析它们的复杂性和收敛性。然后我们在噪声的方差未知的设置中获得地图估计器。仿真结果显示了在方法的估计误差方面进行比较。

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