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首页> 外文期刊>Journal of statistical computation and simulation >Geodesic Lagrangian Monte Carlo over the space of positive definite matrices: with application to Bayesian spectral density estimation
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Geodesic Lagrangian Monte Carlo over the space of positive definite matrices: with application to Bayesian spectral density estimation

机译:正定矩阵空间上的测地拉格朗日蒙特卡罗:及其在贝叶斯光谱密度估计中的应用

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摘要

We present geodesic Lagrangian Monte Carlo, an extension of Hamiltonian Monte Carlo for sampling from posterior distributions defined on general Riemannian manifolds. We apply this new algorithm to Bayesian inference on symmetric or Hermitian positive definite (PD) matrices. To do so, we exploit the Riemannian structure induced by Cartan's canonical metric. The geodesics that correspond to this metric are available in closed-form and - within the context of Lagrangian Monte Carlo - provide a principled way to travel around the space of PD matrices. Our method improves Bayesian inference on such matrices by allowing for a broad range of priors, so we are not limited to conjugate priors only. In the context of spectral density estimation, we use the (non-conjugate) complex reference prior as an example modelling option made available by the algorithm. Results based on simulated and real-world multivariate time series are presented in this context, and future directions are outlined.
机译:我们介绍了大地测量拉格朗日蒙特卡洛,这是哈密顿蒙特卡洛的一种扩展,用于从一般黎曼流形上定义的后验分布中采样。我们将此新算法应用于对称或Hermitian正定(PD)矩阵的贝叶斯推断。为此,我们利用了由Cartan规范度量诱发的黎曼结构。对应于该度量的测地线以封闭形式提供,并且-在Lagrangian Monte Carlo的上下文中-提供了一种在PD矩阵空间中绕行的原理方法。我们的方法通过允许范围广泛的先验来改进此类矩阵的贝叶斯推断,因此我们不仅限于共轭先验。在频谱密度估计的背景下,我们使用(非共轭)复参考作为算法提供的示例建模选项。在这种情况下介绍了基于模拟和现实世界多元时间序列的结果,并概述了未来的方向。

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