用于 CoDa 混合模型的灵活贝叶斯工具:具有 Dirichlet 协方差的逻辑正态分布

IF 1.6 2区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS Statistics and Computing Pub Date : 2024-04-16 DOI:10.1007/s11222-024-10427-3
Joaquín Martínez-Minaya, Haavard Rue
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引用次数: 0

摘要

合成数据分析(CoDa)近年来越来越受欢迎。这类数据由来自不同类别的数值组成,这些数值的总和为一个常数。作为 CoDa 分析方法,Dirichlet 回归和 logistic-normal 回归都很流行。然而,拟合这类多元模型面临着挑战,尤其是当模型中包含结构随机效应(如时间或空间效应)时。为了克服这些挑战,我们提出了逻辑正态 Dirichlet 模型(LNDM)。我们将这一方法无缝集成到 R-INLA 软件包中,在潜在高斯模型框架内促进模型拟合和模型预测。此外,我们还探索了 Deviance Information Criteria、Watanabe Akaike Information criterion 和交叉验证测量条件预测序数等指标,用于在 R-INLA 中为 CoDa 选择模型。我们通过两个模拟示例和伊比利亚半岛拟南芥的生态案例研究来说明 LNDM,强调它作为管理 CoDa 和大型 CoDa 数据库的有效工具的潜力。
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A flexible Bayesian tool for CoDa mixed models: logistic-normal distribution with Dirichlet covariance

Compositional Data Analysis (CoDa) has gained popularity in recent years. This type of data consists of values from disjoint categories that sum up to a constant. Both Dirichlet regression and logistic-normal regression have become popular as CoDa analysis methods. However, fitting this kind of multivariate models presents challenges, especially when structured random effects are included in the model, such as temporal or spatial effects. To overcome these challenges, we propose the logistic-normal Dirichlet Model (LNDM). We seamlessly incorporate this approach into the R-INLA package, facilitating model fitting and model prediction within the framework of Latent Gaussian Models. Moreover, we explore metrics like Deviance Information Criteria, Watanabe Akaike information criterion, and cross-validation measure conditional predictive ordinate for model selection in R-INLA for CoDa. Illustrating LNDM through two simulated examples and with an ecological case study on Arabidopsis thaliana in the Iberian Peninsula, we underscore its potential as an effective tool for managing CoDa and large CoDa databases.

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来源期刊
Statistics and Computing
Statistics and Computing 数学-计算机:理论方法
CiteScore
3.20
自引率
4.50%
发文量
93
审稿时长
6-12 weeks
期刊介绍: Statistics and Computing is a bi-monthly refereed journal which publishes papers covering the range of the interface between the statistical and computing sciences. In particular, it addresses the use of statistical concepts in computing science, for example in machine learning, computer vision and data analytics, as well as the use of computers in data modelling, prediction and analysis. Specific topics which are covered include: techniques for evaluating analytically intractable problems such as bootstrap resampling, Markov chain Monte Carlo, sequential Monte Carlo, approximate Bayesian computation, search and optimization methods, stochastic simulation and Monte Carlo, graphics, computer environments, statistical approaches to software errors, information retrieval, machine learning, statistics of databases and database technology, huge data sets and big data analytics, computer algebra, graphical models, image processing, tomography, inverse problems and uncertainty quantification. In addition, the journal contains original research reports, authoritative review papers, discussed papers, and occasional special issues on particular topics or carrying proceedings of relevant conferences. Statistics and Computing also publishes book review and software review sections.
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