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使用混合模型的实用贝叶斯推理。

Practical Bayesian inference using mixtures of mixtures.

作者信息

Cao G, West M

机构信息

Abbott Laboratories, Abbott Park, Illinois 60064-3500, USA.

出版信息

Biometrics. 1996 Dec;52(4):1334-41.

PMID:8962457
Abstract

Discrete mixtures of normal distributions are widely used in modeling amplitude fluctuations of electrical potentials at synapses of human and other animal nervous systems. The usual framework has independent data values yj arising as yj = mu j + xn0 + j, where the means mu j come from some discrete prior G(mu) and the unknown xno + j's and observed xj, j = 1,...,n0, are Gaussian noise terms. A practically important development of the associated statistical methods is the issue of nonnormality of the noise terms, often the norm rather than the exception in the neurological context. We have recently developed models, based on convolutions of Dirichlet process mixtures, for such problems. Explicitly, we model the noise data values xj as arising from a Dirichlet process mixture of normals, in addition to modeling the location prior G(mu) as a Dirichlet process itself. This induces a Dirichlet mixture of mixtures of normals, whose analysis may be developed using Gibbs sampling techniques. We discuss these models and their analysis, and illustrate them in the context of neurological response analysis.

摘要

正态分布的离散混合广泛应用于对人类和其他动物神经系统突触处电位幅度波动进行建模。通常的框架中,独立的数据值yj满足yj = μj + xn0 + j,其中均值μj来自某个离散先验G(μ),未知的xn0 + j和观测到的xj(j = 1,...,n0)是高斯噪声项。相关统计方法一个实际重要的发展是噪声项的非正态性问题,在神经学背景下这往往是常态而非例外。我们最近基于狄利克雷过程混合的卷积开发了针对此类问题的模型。具体而言,除了将位置先验G(μ)建模为狄利克雷过程本身外,我们将噪声数据值xj建模为由正态分布的狄利克雷过程混合产生。这导致了正态分布混合的狄利克雷混合,其分析可使用吉布斯采样技术来开展。我们讨论这些模型及其分析,并在神经反应分析的背景下对它们进行说明。

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