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引用次数: 0
摘要
尽管高维变化系数模型越来越重要,但对其贝叶斯版本的研究仍处于起步阶段。本文通过开发一种稀疏经验贝叶斯公式,在高斯过程(GP)先验下的贝叶斯变化系数建模框架内解决了高维模型选择问题,为相关文献做出了贡献。为了打破基于 GP 的变化系数建模的计算瓶颈,我们引入了低成本计算策略,将线性代数技术和拉普拉斯近似纳入高维后验模型分布的评估中。我们进行了一项模拟研究,以证明与现有的高维变化系数建模方法相比,所提出的贝叶斯方法更具优势。此外,还利用酵母细胞周期数据说明了该方法在实际数据分析中的适用性。
A sparse empirical Bayes approach to high‐dimensional Gaussian process‐based varying coefficient models
Despite the increasing importance of high‐dimensional varying coefficient models, the study of their Bayesian versions is still in its infancy. This paper contributes to the literature by developing a sparse empirical Bayes formulation that addresses the problem of high‐dimensional model selection in the framework of Bayesian varying coefficient modelling under Gaussian process (GP) priors. To break the computational bottleneck of GP‐based varying coefficient modelling, we introduce the low‐cost computation strategy that incorporates linear algebra techniques and the Laplace approximation into the evaluation of the high‐dimensional posterior model distribution. A simulation study is conducted to demonstrate the superiority of the proposed Bayesian method compared to an existing high‐dimensional varying coefficient modelling approach. In addition, its applicability to real data analysis is illustrated using yeast cell cycle data.
StatDecision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.10
自引率
0.00%
发文量
85
期刊介绍:
Stat is an innovative electronic journal for the rapid publication of novel and topical research results, publishing compact articles of the highest quality in all areas of statistical endeavour. Its purpose is to provide a means of rapid sharing of important new theoretical, methodological and applied research. Stat is a joint venture between the International Statistical Institute and Wiley-Blackwell.
Stat is characterised by:
• Speed - a high-quality review process that aims to reach a decision within 20 days of submission.
• Concision - a maximum article length of 10 pages of text, not including references.
• Supporting materials - inclusion of electronic supporting materials including graphs, video, software, data and images.
• Scope - addresses all areas of statistics and interdisciplinary areas.
Stat is a scientific journal for the international community of statisticians and researchers and practitioners in allied quantitative disciplines.