内禀高斯马尔可夫随机场的尺度先验应用于血压数据

IF 1.4 3区 数学 Q2 STATISTICS & PROBABILITY Statistica Neerlandica Pub Date : 2023-11-06 DOI:10.1111/stan.12330
Maria‐Zafeiria Spyropoulou, James Bentham
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引用次数: 0

摘要

一个内禀高斯马尔可夫随机场(IGMRF)可以用来诱导贝叶斯层次模型中的条件依赖。igmrf既有精度矩阵(定义模型的邻域结构),也有精度或缩放参数。先前的研究表明,为不同类型的IGMRF适当地选择该缩放参数的先验是很重要的,因为它可以对后验估计产生重大影响。在这里,我们关注一维和二维的情况,其中先验的调整是通过将其映射到相应维数的IGMRF的边际SD来实现的。我们比较了缩放各种igmrf的效果,包括使用MCMC方法对真实二维血压数据的应用。
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Scaling priors for Intrinsic Gaussian Markov Random Fields applied to blood pressure data
An Intrinsic Gaussian Markov Random Field (IGMRF) can be used to induce conditional dependence in Bayesian hierarchical models. IGMRFs have both a precision matrix, which defines the neighborhood structure of the model, and a precision, or scaling, parameter. Previous studies have shown the importance of selecting the prior for this scaling parameter appropriately for different types of IGMRF, as it can have a substantial impact on posterior estimates. Here, we focus on cases in one and two dimensions, where tuning of the prior is achieved by mapping it to the marginal SD of an IGMRF of corresponding dimensionality. We compare the effects of scaling various IGMRFs, including an application to real two‐dimensional blood pressure data using MCMC methods.
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来源期刊
Statistica Neerlandica
Statistica Neerlandica 数学-统计学与概率论
CiteScore
2.60
自引率
6.70%
发文量
26
审稿时长
>12 weeks
期刊介绍: Statistica Neerlandica has been the journal of the Netherlands Society for Statistics and Operations Research since 1946. It covers all areas of statistics, from theoretical to applied, with a special emphasis on mathematical statistics, statistics for the behavioural sciences and biostatistics. This wide scope is reflected by the expertise of the journal’s editors representing these areas. The diverse editorial board is committed to a fast and fair reviewing process, and will judge submissions on quality, correctness, relevance and originality. Statistica Neerlandica encourages transparency and reproducibility, and offers online resources to make data, code, simulation results and other additional materials publicly available.
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