首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >BAYESIAN ANALYSIS OF THE COVARIANCE MATRIX OF A MULTIVARIATE NORMAL DISTRIBUTION WITH A NEW CLASS OF PRIORS
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BAYESIAN ANALYSIS OF THE COVARIANCE MATRIX OF A MULTIVARIATE NORMAL DISTRIBUTION WITH A NEW CLASS OF PRIORS

机译:一种新型前瞻性多元正态分布的协方差矩阵的贝叶斯分析

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摘要

Bayesian analysis for the covariance matrix of a multivariate normal distribution has received a lot of attention in the last two decades. In this paper, we propose a new class of priors for the covariance matrix, including both inverse Wishart and reference priors as special cases. The main motivation for the new class is to have available priors-both subjective and objective- that do not "force eigenvalues apart," which is a criticism of inverse Wishart and Jeffreys priors. Extensive comparison of these "shrinkage priors" with inverse Wishart and Jeffreys priors is undertaken, with the new priors seeming to have considerably better performance. A number of curious facts about the new priors are also observed, such as that the posterior distribution will be proper with just three vector observations from the multivariate normal distribution-regardless of the dimension of the covariance matrix-and that useful inference about features of the covariance matrix can be possible. Finally, a new MCMC algorithm is developed for this class of priors and is shown to be computationally effective for matrices of up to 100 dimensions.
机译:多元正态分布的协方差矩阵的贝叶斯分析在过去二十年中受到了很多关注。在本文中,我们为协方差矩阵提出了一类新的前瞻,包括逆不良和参考前沿作为特殊情况。新课程的主要动机是有可用的前瞻性的主观和目标 - 这不会“强迫突破特征值”,这是对逆不良和Jeffreys Priors的批评。通过反向愿望和Jeffreys Priors对这些“收缩前瞻”的广泛比较,新的前锋似乎具有更好的性能。还观察到关于新前方的许多奇怪的事实,例如后部分布将是具有来自多元正常分布的三种向量观测的适当 - 无论协方差矩阵的尺寸如何 - 以及关于特征的有用推断协方差矩阵可以是可能的。最后,为该类别开发了一种新的MCMC算法,并且被示出了对最多100个维度的矩阵进行计算地有效。

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